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Article

Fuzzy Assessment of Management Consulting Projects: Model Validation and Case Studies

1
Department of Systems Engineering, City University of Hong Kong, Hong Kong 999017, China
2
School of Business Administration, Zhejiang University of Finance & Economics, Hangzhou 310018, China
*
Author to whom correspondence should be addressed.
Mathematics 2023, 11(20), 4381; https://doi.org/10.3390/math11204381
Submission received: 29 August 2023 / Revised: 14 October 2023 / Accepted: 15 October 2023 / Published: 21 October 2023

Abstract

:
Management consulting (MC) has been heavily involved in emerging business opportunities in mainland China. However, there are no well-known local MC project management models to help evaluate whether an MC project can be successful or not. This paper reports a model for the self-assessment of management consulting projects, which has been validated by 15 experts and 13 cases. The new model, with seven factors that are critical to the success of MC projects, was developed from a literature review. The model was then verified by developing a questionnaire that was sent to 15 experts and using Dempster–Shafer theory to obtain the weight of each part of the model. The model was applied to 13 real cases to verify its effectiveness in evaluating an MC project. This new MC model can help consulting teams to conduct assessments in the early and middle stages, and evaluate in the late stage, of consulting projects, and also can help teams improve the probability of project success and client satisfaction. It can be used by consultants, client companies, or both.

1. Introduction

In recent decades, virtually every enterprise has been engaged in the process of project development or system reform. The enterprise normally invites outside consultants when their internal experience and ability are insufficient. This has made management consulting (MC) increasingly popular as a management practice applicable to many industries and has prompted the need to develop better standards, technologies, and practices for MC [1]. However, managing an MC project is a complex endeavor. Finding a comprehensive and applicable process model that can help MC projects succeed has been a critical and challenging task in the study of MC projects. Several MC project models have been proposed, but a truly comprehensive one remains elusive.
The above issue is even more challenging for Hong Kong MC teams in exploring the mainland market of China. Backed by the mainland market, the MC industry in Hong Kong has a huge potential market. The central government of China and Hong Kong signed the Closer Economic Partnership Arrangement (CEPA) for the first time in 2003. The purpose of the CEPA is to promote the industrial restructuring and upgrading of the two sides to achieve mutual benefit and complementarity. Since then, a supplement to the CEPA has been signed each year with the aim of continuously expanding market liberalization measures to further facilitate Hong Kong service providers. In 2014, the two sides signed a sub-agreement under the CEPA, namely the agreement on fundamentally liberalizing the mainland’s trade in services in Guangdong and Hong Kong (the Guangdong Agreement). In December 2015, the two sides signed the trade-in services agreement, delineating the liberalization measures that the mainland would undertake to open its doors to service providers and professionals from Hong Kong from June 2016. Furthermore, this agreement expanded the geographic scope of service trade liberalization to encompass the entirety of the mainland. The Chinese mainland has provided Hong Kong MC enterprises with a vast market place and unlimited growth potential. Hong Kong companies are the largest outside investors in mainland China, and mainland companies are significant investors in the Hong Kong economy.
MC is expected to provide a systematic approach to cover all phases of a management project and ensure that each phase is carefully planned, monitored, and measured [2]. While many researchers have solved the problems related to project management in large companies [3,4], more research should be conducted on project management in small and medium-sized enterprises (SMEs) [5].
At present, most of the international MC ideas have been widely accepted in the global scope. It is not difficult for entrepreneurs to accept advanced ideas, but helping them implement these theories in the local market remains a challenge. For the management consulting industry in mainland China, after 30 years of exploration, the dual transformation of the consulting subject and the consulting content is realized [6]. With the rapid development of local management consulting institutions in China, there is still a large-scale gap with international consulting companies, such as a lack of profitability and core competitiveness. Compared to mature international MC companies, Hong Kong’s local consultants fully understand the local market environment, but in the face of strong competitors, there is not a good selection of MC companies in Hong Kong, and the use of the MC method lacks many innovative and targeted MC models.
This paper aims to report a proposal and validation of a more suitable model for Hong Kong MC enterprises, enabling them to conduct management consulting effectively in Hong Kong and/or mainland China. From the literature review, we identified seven factors that are critical to the success of MC projects. The model was then evaluated by 15 experts, and the Dempster–Shafer theory was used to obtain the weight of each factor. Thirteen case studies are reported to verify the application. Section 2 provides the development of the new model from the literature review. The model is then evaluated using the Dempster–Shafer theory in Section 3 and Section 4 to obtain the weight of each part of the model, and in Section 5 is applied to 13 real cases to verify its effectiveness.

2. Literature Review and Model Development

2.1. Concepts and Terminologies

As a form of modern consulting, MC in contemporary society has rapidly developed and played a huge role. It is often referred to as a “brain industry” that helps managers identify and analyze problems, advise, and get out of trouble. However, there is still no unified definition of MC.
The Association of MC Engineers defines MC by stating: “a person with theoretical knowledge or experience in MC exposes problems in The Management of the enterprise and proposes practical solutions to help implement them”. As defined by The International Council of Management Consulting Institutes, “an MC consultant is an individual responsible for Management who provides independent Consulting advice and guidance to clients”. The International Labor Committee defines MC as “helping to solve management and business problems, to identify new opportunities, and to use it for the purpose of organizing administrative agencies to help continue and expand learning opportunities”.
According to [7], MC is “dynamically facing new challenges because the management tools, methods and methods that make up the field are applied in different fields, for different purposes and in different cultures”.
To sum up, MC refers to the management behavior in which natural persons or legal persons with professional knowledge and experience or training accept commissions, take operation and management as their primary business, and use management tools to provide knowledge, functions, planning, and other high-intelligence services in various fields for different purposes.

2.2. Previous Models for Consultation Management

While undeniably crucial, MC is fraught with challenges. Planning and implementing a successful MC project is not easy. It requires a criterion for success or a complete, comprehensive, and applicable process model. The ASQ team spent approximately 35 years and engaged numerous teams from over 30 countries, to create the International Team Excellence Award (ITEA) Criteria, and provide a framework for assessing team performance and project processes. On this basis, we searched the literature on MC and project management (PM) and reviewed the influencing factors and models related to MC.
From the literature, seven different MC models and seven associated factors were identified (see Table 1 below).
In the following, the seven models will be elaborated from the following aspects: which factors will be included, to which fields and industries do they apply, whether to conduct quantitative analysis, whether there is empirical analysis or just a conceptual model, whether there is a flow chart, advantages and disadvantages, etc.
Model 1—The ASQ organization’s ITEA model [8] provides a six-section framework to help organizations improve the results of their projects, providing guidance and repeatable benchmarks for projects of different organization sizes, industry types, or project types. This model starts from the identification and selection of the project and ends with a project presentation, which relatively clearly and fully presents the process of all parts of the project. Every part is responsible for the detailed and rich further subdivided activities and description. For each sub-part, this model provides scoring criteria of differing maturity. The scores range from 0 to 4, with each layer having to perform better based on covering the previous layer. At the same time, the model emphasizes the relevance of each phase, its importance to the long-term planning of an MC project, and the relevant planning of the organization to support the project. However, the model does not provide a process or sequence, leaving the user with many considerations but no idea where to start or what to do at a certain point in time. This model is only suitable for evaluating completed projects, but it cannot be used as a starting point for a project.
Model 2—Reference [9] provided four main phases of a project decision analysis process (PDAP): decision framing, modelling the alternatives, quantitative analysis, and actual performance tracking. The four phases run in sequence, while part of the actual performance trace is continuously fed back to the remaining three. These four stages correspond to the project framework, project walkthrough, project background and purpose, and project tracking and control. The PDAP model provides process guidance that requires both qualitative and quantitative analysis, and in which the quantitative analysis method can be adjusted according to different requirements. This model takes more account of process quality and relationships with the system organization and is effective and practical: it is practical because it is easy to integrate with existing processes; its effectiveness is reflected in the scalability and flexibility of the model to provide effective feedback and adaptability. At the same time, this model also considers the correlation degree and strength between its effectiveness and organizational effectiveness under the framework of competitive value. However, the model is implemented on the premise that there must be high-quality useful information, sufficient and accurate information about competitors, that the project leader or decision maker needs to be trained, and that the appropriate, but not all, project processes can be integrated.
Model 3—Reference [3] discussed how to establish a project organization in a telecommunications environment and developed a standardized project management process, which was divided into four steps: project initiation, project definition, project implementation, and project completion. These four stages correspond to the project background and purpose, the project framework, project overview, and project walkthrough. At each stage, validation was repeated until all conditions were met. The main purpose of this model is to provide a common operational framework and major control mechanisms for all project managers. The advantage is that the framework is relatively flexible and can accommodate and monitor the situation of each part while maintaining necessary system control. Second, the model facilitates stakeholder participation in each phase of the project lifecycle. In addition, the model’s versatility makes it easy for new employees to start. However, this model is only a qualitative analysis and lacks a quantitative data analysis. In addition, the absence of risk anticipation and response procedures makes it difficult for project personnel or organizations to respond promptly to the changes in project requirements. At the same time, this model also lacks benchmarks as it is confined to individual project management and is not suitable for comparing or measuring different project management processes.
Model 4—Reference [5] identified six factors of successful project management with the greatest potential benefits for small and medium-sized businesses (SMEs). They are clear objectives, top management support, resource allocation, planning, monitoring and control, client consulting and risk management. The six success factors correspond to the project background and purpose, project framework, project stakeholders and project team, project overview, project walkthrough, project tracking and control. The six factors are based on a survey conducted asking managers of small and medium-sized enterprises their opinions on the six factors in their enterprises on a scale of 1 to 5. Each of the more than 200 small and medium-sized businesses in the survey had fewer than 250 employees, and they covered a wide range of sectors, including health care, telecommunications, electronics and engineering, and were mostly in high-tech industries. Although high-tech companies contribute a lot to society in terms of wealth creation and employment, these technical entrepreneurs have relatively poor business management skills, so this model is a good way to help these high-tech SMEs. The model analyzed the questionnaire results using SPSS 27 software and ranked the importance of six influencing factors. Among these factors, clear objectives and support from senior management were identified as the most important success factors. The significance of this model lies in the in-depth study of its project management model based on the characteristics of small and medium-sized enterprises, but the scope of use is also limited to small and medium-sized enterprises, therefore, there is no way of it being widely promoted.
Model 5—Reference [10] proposed a comprehensive project management model that elaborated several stages of systematic management of university processes: the general concept of processes, environmental characteristics and internal accuracy, and the ability to plan, organize, implement, evaluate, adjust and improve. These stages correspond to the project background and purpose, project framework, project overview, project walkthrough, and project presentation. This model is applicable to general university management and is an effective method of substantive process management. It helps optimize human, material, technical, financial and information resources to improve the quality and impact of management results. Notably, this model is characterized by high interactivity, meaning the completion of each stage affects the entire process and depends on at least one other stage. This feature facilitates the guidance of the process and allows for recalibration when necessary. The system model was successfully implemented during the 2012–2013 academic year at the tested universities, resulting in improvement in all its selected indicators. By observing the process and communicating with the actors involved in the process, Aguilera found that all stakeholders had a high degree of satisfaction with the management of the substantive process. The limitation of this comprehensive project management model is that it only extends to the organization and functions of the university, and only applies to the management of the university.
Model 6—In the Project Excellence Model®, reference [11] proposed a series of critical key success factors, five project types and six organizational domains through a literature review. The critical factors for project success are organization, results, and feedback, respectively. These factors include (1) leadership and team, (2) policy and strategy, (3) stakeholder management, (4) resources, (5) contracting, (6) project management, (7) success criteria and (8) external factors, respectively. These factors are interrelated to form a coherent model.
Project types play a critical role in project management because the project objectives of different areas and types must match external factors. The five project types in the model include (1) product-oriented, (2) tool-oriented, (3) system-oriented, (4) process-oriented and (5) complete project management. The six result areas include (1) project results, (2) appreciation by the client, (3) appreciation by project personnel, (4) appreciation by users, (5) appreciation by contracting partners, and (6) appreciation by clients. This model includes the project background and purpose, project stakeholders and project team, project overview, project walkthrough, project tracking and control. At project startup, it is imperative to categorize the six resulting domain reads of the model and select the corresponding project type in each domain. This model has been successfully demonstrated in a medium-sized organization and is generally flexible in adapting to project objectives. Linking project outcome areas, organizational areas, and different project types can provide good insights into improving project organizational functions. However, the model has its limitations in terms of comprehensively covering all relevant success factors.
Model 7—Reference [12] proposed PRINCE2, a standard project management tool. PINS2 is a structured project management method that encompasses elements related to project organization, management, and control. It finds primary application with commercial, government and construction projects in the UK. The authors used it in clinical trial management and obtained good results. This model mainly has the following four characteristics: clear objectives, measurable conclusions, clearly defined resources and clearly defined organizational responsibilities. This model includes the project background and purpose, project framework, project overview, project tracking and control. This model can be used in different areas to improve management efficiency and reduce process costs. However, it should be noted that this approach comes with certain limitations. The tools and terminology employed may not be readily familiar to most participants, necessitating additional training to surmount the considerable learning curve.
Two gaps are identified from the above review of the seven MC models. First, these seven models identify seven factors that are important for MC. However, as shown in Table 1, they only cover some of the seven factors that are related to successful MC. All of them miss one or another factor. The following section will propose a new model that integrates all the seven factors identified from previous models.
Secondly, most of these models are qualitative, and only those involving maturity are quantitatively analyzed. The models rely more on managers’ experience and judgment of subjective consciousness. There is no complete and systematic model to conduct both qualitative and quantitative analysis of these factors step by step. Even these MC factors have differences in partitioning and qualification between different models, as shown in Table 1 above. This study solves this problem by proposing and applying a new model to the MC project.

2.3. The Proposal of a New Model

The success of the MC project firstly depends on the manager who leads the project. Therefore, this study proposes an MC project manager-oriented model, as shown in Figure 1. Managers can use this model to have clear control over the overall project framework and direction. In this model, the initial three parts (part A to part C) are mainly dedicated to understanding and mastering the basic information of the project, part D to part F place emphasis on methods, processes and results of the project, part G underscores the notion that, as a management consulting project, the presentation of project results and the project’s completion process should be conducted by consultants for the benefit of the client. This brings about the holistic process of management consultation. The subsequent section elaborates on the seven factors (categories) of this new model.

2.3.1. Project Background and Purpose

The project background and purpose include these parts: organizational approach to project planning, project identification process, project selection process, project goals and benefits, and success measures/criteria identified [8]. Before the start of an MC project, the manager should select and prioritize. Total resources resemble a pie, and they are limited. Each project cannot share the same amount of manpower, funds, equipment and other resources. It is the first step of the model, which is how to identify the scope of the project and allocate resources according to the project’s revenue and requirements. In this step, the project needs to be evaluated and predicted in terms of cost, potential benefits, development risks, time to market and so on. Methods commonly used in project selection are the checklist model, scoring model and analytic hierarchy process (AHP) [13].
Secondly, success criteria are the criteria to measure the success or failure of a project, and an MC project manager should clearly distinguish between critical success factors and critical success criteria before starting.

2.3.2. Project Framework

This project framework section builds upon the project selection, goals, and success measures discussed in Factor 1. For maximum effectiveness, it is crucial that all team members have a clear understanding of both the “what” and the “why” (the significance) of their projects. Whether an organization follows a formal project charter process or not, team members should possess the ability to succinctly summarize their project, comprehend the type of project they are undertaking, grasp the scope of their work, and be aware of the project’s timeline. The team should explicitly define the project type, which can include problem-solving, process/continuous improvement, design, or transformational, among other examples. Documenting basic assumptions and anticipated risks is important to prevent unexpected challenges during the project. Furthermore, the team should have a thorough understanding of the resources available to them. A project framework template is provided to ensure consistency in capturing and sharing the necessary information.
The project framework includes these parts: concise project statement, type of project, scope statement, assumptions/expectations, project schedule/high-level plan, budget (financial or resource) and risk management. The combination of project type and team is crucial, in particular because the personality and personal style of the project manager have a certain influence on the success of the project [14].
The project scope needs to state everything about the project, including all activities to perform, resources to consume, end products and quality standards. A scoping statement usually uses a work breakdown structure (WBS), an organization breakdown structure (OBS), and a linear responsibility chart. Gantt charts are a popular way of time scheduling which is crucial. Reference [5] proved that the completion schedule can make the project more likely to succeed.

2.3.3. Project Stakeholders and the Project Team

Project stakeholders include these elements: stakeholders and how they are identified, project champions, project team selection, team preparation, and team routines. Project stakeholders are significant. A successful operation of the MC project requires the support and cooperation of banks, governments, environmental groups, customers, employers, employees, the public, shareholders, suppliers, distributors and other groups. In a successful MC project, stakeholders can be involved throughout the whole process. Reference [11] also considered appreciation and other feedback from both the direct and indirect parties involved in the project.
In addition, as far as team development is concerned, there are generally four stages: forming, storming, cooperation, and performing [15]. Managers need to keep an eye on the development of the team and resolve internal and external conflicts.
Team preparation requires training in tools, techniques, and knowledge of the project. Consulting training has not been given sufficient concern [16]. The lack of training practice may be related to the lack of research on consulting training [17]. In the past, a project would provide consultation courses focused on the theoretical knowledge of consulting, the development of the intervention, the process, and the maintenance of the intervention through consultation [18]. After determining the background, purpose, framework and team members of the MC project, the manager needs to organize training and preparation for the members of the team in terms of content, culture, methodology, and development. This is a critical step. Sufficient training can improve the efficiency of project members and project completion. In terms of content, each member should be made aware of all information about the project. Regarding culture, members need to understand each other’s cultural differences and the cultural backgrounds of other stakeholders. There are clear cultural elements in the consulting literature, such as “multicultural consulting” [19] and “cross-cultural consulting” [20], which can be regarded as the theoretical framework of consulting. Project participants usually spend much less time in the field of multiculturalism or diversity [18]. Skills and methods can be taught to engineers without many difficulties [21]. Only with simple and rapid training can project members continuously learn in action [22].

2.3.4. Project Overview

The project overview serves as a bridge between the background/preparation work and project execution/results. The project overview includes these parts: project approach, tools used throughout project, tool output at different stages of a project, how a team was prepared to use the tools, dealing with project risk, encountering and handling resistance as a risk and stakeholder involvement in a project. The project needs to be subdivided into more detailed work steps at each stage, and one or more project management tools must be used at each stage [10]. Project tools are many, such as project management maturity models (PMMMs) [23], critical path method (CPM), process evaluation and review techniques(PERT) [24], critical chain project management (CCPM) [25] and increasingly popular hybrid methods [26].

2.3.5. Project Walkthrough

The project walkthrough is the core of the project to demonstrate how they moved from decision to decision to complete their project. The project walkthrough includes these parts: data-driven project flow, solution validation, solution justification, results, maintaining the gains and project communication. Process improvement has been a top priority for the past decade [27]. Teams should validate and improve their solutions and always communicate with project stakeholders before implementing project solutions.

2.3.6. Project Tracking and Control

Project tracking and control is further discussions and implementation of the risks in the project overview. This must be a continuous process overseen by a designated individual.
Project tracking includes the implementation, monitoring and review of project [9]. Specifically, the team is implementing the best alternative, monitoring project execution, and reviewing the project experience. Project tracking and monitoring is a very important phase for the execution and management of an MC project. A previous study by [28] pointed out that proper tracking and monitoring practices are critical to successfully delivering a project.
Project control includes the control of time, process progress, capital use, risk and uncertainty factors, etc. Risk management is the most important part of project control. Uncertainty and risk are at the heart of all projects. Effective risk management is essential of successful project management [1]. Appropriate risk management can help project managers mitigate known and unexpected risks for various of projects [29].

2.3.7. Project Presentation

Although the project presentation is not a separate phase of a project, it is a collection of key points for the project team to share with stakeholders.
Project presentation includes slide readability, logical flow of information, use of graphics and illustrations, and narrative and visual text. In addition, the speaker’s body language and eye contact with the audience are important.
Project presentation is the integration of everything, such as project purpose, team, stakeholders, method of use, process, end results and gap with expectations. The speaker needs to concisely explain these key points and key information to the internal and external groups. It is the final stage of completion of the project.

3. Model Evaluation Methodology

3.1. Data Collection Method

To verify the model shown in Figure 1, a questionnaire (assessment tool) was designed based on the seven factors in Figure 1 and supported by relevant literature. For each factor, about 6–12 questions were asked to measure the importance of the factor. Scores ranged from 1 to 10, from unimportant to very important. This questionnaire is supposed to be used for two purposes. The first is that the questionnaire will be used for the expert assessment of the seven factors and the questions under each factor, and the data analysis of the assessment results will be carried out. The weight of each factor will be determined based on the results of the expert assessment. The second is that the questionnaire will be used for the next phase of the case project evaluation.
The questionnaire (assessment tool) is attached in Appendix A.

3.2. Data Analysis Method

To quantitatively assess the model, integrate expert ratings, and enhance its applicability in real-world scenarios, the following seven factors should be evaluated to obtain their respective weights. The MC model proposed in this paper contains seven factors and dozens of problems, so we did not use methods like AHP (analytical hierarchical process), but adopted the combination method of Dempster–Shafer, based on upper and lower bound probability [30].
The D-S theory was proposed by Dempster in 1967. It belongs to artificial intelligence and the expert system. The method has the ability to cope with uncertain information by the expert scoring and represented in the data structure [31]. D-S evidence theory is a tool for decision making on multi-source data with uncertain information [32]. D-S theory has been widely used in many fields including sensor data, biometric recognition, and decision support systems [33,34,35].
Dempster–Shafer theory provides many combination rules for framework construction. This paper uses the combined Dempster–Shafer method, which is widely used, easy to implement, and emphasizes the consistency between multiple sources.
The process of determining the weight for each category is shown as follows. First, for each expert, we calculate the score of each category as the mean value of the questions in that category. Then, the category scores were normalized using the following formula:
mi(X) = mix/sumi
where mix is the score of categories X(X = A to H) from expert i, and sumi is the sum of all category score by expert i.
Then, according to the Dempster–Shafer combination rule, to combines 2 experts’ score.
[ m 1 m 2 ] ( y ) = 0 y = φ A B = y m 1 ( A ) m 2 ( B ) 1 A B = φ m 1 ( A ) m 2 ( B ) y φ

4. Model Evaluation Process

4.1. Experts Evaluation

We invited 15 experts who agreed to support this project, as listed in Table 2. They all have experience in management consultation for years in China. During the separate correspondence process with each expert, the information gathered reveals that the new MC model is comprehensive and can be used to evaluate an MC project relatively fully. The 15 experts were finally invited for the evaluation of the model according to the questionnaire (assessment tool) in Appendix A. The backgrounds of the 15 experts are listed in Table 2.

4.2. Expert Evaluation Analysis via the Dempster–Shafer Combination Method

According to the expert scoring, we obtained 15 pieces of data with different weights. In order to obtain a more accurate and comprehensive weight, the data need to be normalized according to the principles and guidelines of the Delphi method to obtain a comprehensive evaluation of the model [36]. Through the D-S data processing method described above, 15 expert scores were combined one by one to obtain the D-S value.
The weight of each category is determined as follows. First, for each expert, we calculate the average of their response to the questions with each category. Subsequently, we calculate the sum of these averages across all specialists.
Average score (A) = (A1 + A2 + … + Ai)/i;
Average score (B) = (B1 + B2 + … + Bj)/j;
……
Average score (G) = (G1 + G2 + … + Gm)/m;
SUM of Average score = Average score (A) + Average score (B) + …… + Average score (G)
As shown in Table 3, the scores of 15 experts on seven factors are processed.
Second, the following formula is used to standardize category scores:
mi(X) = mix/sumi
where mix is the score of categories X (X = A to G) from expert i, and sumi is the sum of all category score by expert i.
As shown in Table 4, scores are standardized.
Then, using the Dempster–Shafer combination rule to combine two experts’ score.
To illustrate the combination rule, see the following example. If the normalized score from expert 1 is [m1(A), m1(B), m1(C)…, m1(F), m1(G)] for category A to G, and the normalized score from expert 2 is [m2(A), m2(B), m2(C)…, m2(F), m2(G)] for category A to G it would be optimized to calculate the Dempster–Shafer value for the expert 1 and expert 2 for category A as follows:
D S 2 ( A ) = m 1 A m 2 A 1 m 1 A m 1 B m 1 C m 1 H m 2 A m 2 B m 2 C m 2 G = m 1 ( A ) m 2 ( A ) 1 ( 1 m 1 A × m 2 A + 1 m 1 B × m 2 B + + 1 m 1 G × m 2 G )
For category B:
D S 2 ( B ) = m 1 B m 2 B 1 m 1 A m 1 B m 1 C m 1 H m 2 A m 2 B m 2 C m 2 G = m 1 ( B ) m 2 ( B ) 1 ( 1 m 1 A × m 2 A + 1 m 1 B × m 2 B + + 1 m 1 G × m 2 G )
For category C:
D S 2 ( C ) = m 1 C m 2 C 1 m 1 A m 1 B m 1 C m 1 H m 2 A m 2 B m 2 C m 2 G = m 1 ( C ) m 2 ( C ) 1 ( 1 m 1 A × m 2 A + 1 m 1 B × m 2 B + + 1 m 1 G × m 2 G )
For category G:
D S 2 ( G ) = m 1 G m 2 G 1 m 1 A m 1 B m 1 C m 1 H m 2 A m 2 B m 2 C m 2 G = m 1 ( G ) m 2 ( G ) 1 ( 1 m 1 A × m 2 A + 1 m 1 B × m 2 B + + 1 m 1 G × m 2 G )
where DS2 means 2 experts’ score are combined.
After the scores from expert 1 and expert 2 are combined, the result would be combined with score from expert 3, as follows:
For category A:
D S 3 ( A ) = D S 2 A m 3 A 1 D S 2 A D S 2 B D S 2 C D S 2 H m 3 A m 3 B m 3 C m 3 G = D S 2 ( A ) m 3 ( A ) 1 ( 1 D S 2 A × m 3 A + 1 D S 2 B × m 3 B + + 1 D S 2 G × m 3 G )
For category B:
D S 3 ( B ) = D S 2 B m 3 B 1 D S 2 A D S 2 B D S 2 C D S 2 H m 3 A m 3 B m 3 C m 3 G = D S 2 ( B ) m 3 ( B ) 1 ( 1 D S 2 A × m 3 A + 1 D S 2 B × m 3 B + + 1 D S 2 G × m 3 G )
For category G:
D S 3 ( G ) = D S 2 G m 3 G 1 D S 2 A D S 2 B D S 2 C D S 2 H m 3 A m 3 B m 3 C m 3 G = D S 2 ( G ) m 3 ( G ) 1 ( 1 D S 2 A × m 3 A + 1 D S 2 B × m 3 B + + 1 D S 2 G × m 3 G )
where DS3 means 3 experts’ score are combined.
And then the result would be combined with expert 4. It would be repeated until all of the experts’ score are combined.
As shown in Table 5, the D-S scores of 15 experts for seven factors are shown.
The scores of DS 15 are the composite weight scores of 15 experts for 7 factors, also called weight of section.
After the weighting factor of each issue at organization readiness has been calculated, it is time to generate the weighting factor for each KPI in each section, which is the result of the multiplication of the MC factors’ weight and the KPI weight of that related issue.
First, the same method is used to standardize the data. Subsequently, according to the Dempster–Shafer combination rule, the DS value of KPI in each section can be calculated in Table 6.
And the weight of each KPI is the result of the multiplication of the weight of the section and DS15 of KPI, the combined weight value of 15 experts in Table 7.

5. Case Studies

5.1. Background of 13 Cases

With the help of several consulting firms, we found some real cases of MC projects. These companies are located in China’s Hong Kong, Greater Bay Area, southwest, east and south, and they are all typical companies that meet the application conditions of the MC model (in China’s market background and corresponding demand). As shown in Table 8, these projects cover different industries, have different application scopes and project sizes, which can verify that the MC model can effectively evaluate a management consulting project, regardless of organizational size, industry type or project type.

5.2. The Process of Case Studies

The process is divided into the following four steps: project study (basic information acquisition and statement), project evaluation, weighted score calculation (combined with project evaluation scores and MC model weight scores), score comparison and conclusion. Project research mainly introduces the project background, including project type, industry involved, number of team members, expected completion time, actual completion time, client satisfaction, etc. Project scoring is to invite the consultant or the person in charge of the consultant to fill in the project measurement and evaluation questionnaire. Weighted score calculation is based on the score of the project and the weight of the experts.

5.3. Case Study One as an Example

Case 1 is from Team A, which is a management consulting team from a consulting firm in the Greater Bay Area. The total number in the team is 10. It has been established for eight years and has completed nearly 100 management consulting projects.
The project was carried out by Team A in Sichuan Province in March 2018. The project enterprise is a newly established provincial state-owned enterprise with more than 20 employees at its headquarters and six subordinate companies, each with about 30 employees. The purpose of this project is to establish an organizational structure and develop a performance appraisal plan for the enterprise. It was planned to be completed in three months, but it was actually delayed by two weeks. In this project, the participation of the senior management is high, but the cooperation between the middle management and the grassroots is not high, which leads to some resistance and affects the project schedule.
We obtained the project evaluation data according to the team leader’s score of the project through the project measure and assessment tool (Appendix A).
In order to evaluate the project through the model, we combined the evaluation data provided by the team leader with KPI weight.
KPI Score = Evaluation from Case × Weight of KPI
Weight% = ∑ of weight of each KPI, which shows the importance of that section, which also is weight of section (see Table 7).
Score of Section = ∑ of KPI score/∑ of weight of each KPI
The project weight data processing of case 1 is shown in Table 9.

5.4. Comparison of the 13 Cases

Due to page limitations, we will not report the application of the other 12 cases. Through the project evaluation of 13 management consulting cases of 6 consulting companies by the new MC model, we can obtain the weight score of these 13 cases as shown in Table 10.
As can be seen from Table 10, it is evident that projects with evaluation scores above 12 are generally more recognized and satisfied by clients, while projects with evaluation scores below 12 are generally less successful and less satisfactory.
We can divide the project into the following fractional sections. From the perspective of different sections, the individual scores of the first six sections also impact the success of the project, as shown in Table 11.
According to the classification in Table 11, among the 13 cases found in this paper, there are 4 failure cases, namely, cases 1, 2, 6 and 8; there are 4 common cases (with general performance), namely, cases 3, 4, 5 and 7; and there are 5 success cases, namely, cases 9, 10, 11, 12 and 13. This is shown in Table 12. Feedback was provided to the case projects and mostly matched the client satisfaction measure except for case 8.

6. Discussions and Implications

6.1. Theoretical Implications

Using models to help manage consulting projects is not a novel approach. There are many such models, but some parts of these models need to be improved. The ITEA model of the ASQ organization only carries out post-project evaluations and lacks the weight analysis and process analysis of each part, so it cannot be used as a reference model in the early stages of the project. Reference [9] provided the project decision analysis process (PDAP), and reference [3] presented the project organization model, providing only a process guide. Reference [5] only proposed six management factors for successful projects. References [10,11,12] proposed a qualitative conceptual model without quantifying the model.
Compared with previous models, this new management consulting model explains the relationship between the factors and processes. It covers the tracking and control part of the project. It is convenient for the consulting team to follow the D-S theory, and it can help the consulting team to predict, track and evaluate the consulting project in the early, middle and late stages, thereby helping the team to improve the success of a project and client satisfaction.
The new management consulting model was validated through the professional evaluation by 15 experts with 5–30 years of experience and Dempster–Shafer theory. This allows the new model to perform both qualitative and quantitative analysis of management consulting projects. This was not possible in all the previous models.

6.2. Practical Implications

The new model can help the project team to conduct guidance, self-tests and correction in the early and middle stages of the project. The process-based model and the maturity scale with clear levels can help the project team to conduct self-assessment and improvement in the early stage of a project, and improve the success probability and client satisfaction of the project through clear standards. In the middle of the project, it can be based on the model to fill in the missing pieces of the successful factors.
A good management consulting model can be applied to different stages and situations in a project [12]. This model can be used for project establishment, management and evaluation, providing a transparent and powerful tool for managing the risk, budget and more aspects of consulting projects [11].

7. Conclusions

Based on the review of the previous management consulting models, this paper discovered the existing deficiencies and proposed a new MC model. A total of 15 experts with 5–30 years of experience were invited to assess the importance of the seven factors of the new model. The Dempster–Shafer algorithm was used to summarize the 15 expert scores and obtain the weight of each part of the model. Then, the MC model was proved to be effective in the evaluation of management consulting projects in Hong Kong and mainland China through 13 cases. This new MC model can help the consulting team to conduct an assessment in early stage, track in the middle stage and evaluate in the late stage of the consulting project, and also can help the team improve the probability of project success, and client satisfaction.
The contribution of the new model can be summarized as follows. (1) the model covers all seven important factors identified from the literature review, providing a more integrated and systematic model to evaluate an MC project; (2) the model is evaluated by D-S theory and verified by case study, providing a complete and systematic model to conduct qualitative and quantitative analysis for an MC project; (3) the model can be applied to different stages of an MC project, allow flexibility in real-world applications and improve both project success and client satisfaction.
The research is not without limitations. First, the study was conducted in the Chinese context. As the success of an MC project may be related to cultural factors, the effectiveness of the proposed model beyond the boundary of China is questionable. Second, this model was only applied in a relatively small sample size of 13 cases. In the future, the model should be verified in an international context to see its validation across cultures and verified by more real cases.

Author Contributions

Conceptualization, H.S. and W.N.; formal analysis, L.H.; writing—original draft preparation, L.H. and H.S.; writing—review and editing, H.S. and W.N. All authors have read and agreed to the published version of the manuscript.

Funding

The report is supported by a project (92399046) from City University of Hong Kong.

Data Availability Statement

The data presented in this study are available on request from the corresponding author. The data are not publicly available for business reasons.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A. A Quantitative Assessment Tool for Management Consultation Model

Pls. rate the importance of the following factors for MCNot important ←→ Important
Part AProject Background and Purpose12345678910
A1Should organizations have a general approach to selecting projects?12345678910
A2Should the team understand how the need for projects is identified in their organization?12345678910
A3Should the team understand how project prioritization/selection be done?12345678910
A4Should the project selection process be data-based?12345678910
A5Are project goals and benefits well-documented?12345678910
A6Are project goals and benefits evaluated?12345678910
Not important ←→ Important
Part BProject Framework12345678910
B1Does the project have concise project statement which includes three parts (the current state, desired future state and the gap)?12345678910
B2Are the type of project specified?12345678910
B3Are the project scope stated?12345678910
B4Are the assumptions/expectations documented? (Assumptions typically include timing, resource availability, or products or services that will come from outside the group.)12345678910
B5Is there a project schedule or high-level plan?12345678910
B6Is there a financial or resource budget?12345678910
B7Is there a risk management plan?12345678910
Not important ←→ Important
Part CProject Stakeholders and the Project Team12345678910
C1Are stakeholders or stakeholder groups identified?12345678910
C2Is project champion who is the primary stakeholder identified?12345678910
C3Should skills be required during project team selection?12345678910
C4Are there any team preparation activities?12345678910
C5Is there any team training (such as skill, tool, or project background)?12345678910
C6Are the team routines discussed and be understood?12345678910
C7Are internal and external conflicts considered?12345678910
Not important ←→ Important
Part DProject Overview12345678910
D1Is there a formal project approach or structure?12345678910
D2Is there a tools selection and explanation?12345678910
D3Is there tool output at different stages of project?12345678910
D4How team was prepared to use the tools?12345678910
D5Are there some mitigation plans for common risk ahead of time?12345678910
D6Are there ways to identified and addressed risk of stakeholder resistance?12345678910
D7Are stakeholders or stakeholder groups involved throughout the whole project?12345678910
Not important ←→ Important
Part EProject Walkthrough12345678910
E1Is there a data-driven project flow?12345678910
E2Is there a statement of solution validation?12345678910
E3Is there a statement of solution justification (to show the final solution’s appropriateness)?12345678910
E4Is there is a statement of project results which can show how the gap has been closed?12345678910
E5Is there a need to ensure that the changes remain in place and that the results are maintained?12345678910
E6Are results communicated during stakeholders?12345678910
Not important ←→ Important
Part FProject Tracking and Control12345678910
F1Is there any plan for tracking process (time control)?12345678910
F2Is there any plan for tracking finance (budget control)?12345678910
F3Are there any tools for project tracking and control?12345678910
F4Is there any specific person who response for project tracking?12345678910
F5Is there any adjustment during project?12345678910
F6Is there a review or summary of the project?12345678910
Not important ←→ Important
Part GProject Presentation12345678910
G1Are slide numbers mostly visible or readable?12345678910
G2Are items numbers mostly visible or readable?12345678910
G3Are most slide contents visible and easy to read?12345678910
G4Is the presentation easy to follow logically?12345678910
G5Do the item numbers and slide labeling mostly matched material being presented?12345678910
G6Are graphics, illustrations and narrative used as presentation tools?12345678910
G7Are graphics, illustrations and narrative integrated to support the presentation and emphasize key points?12345678910
G8Are there any errors on English grammar, spelling or sentence structure?12345678910
G9Is presenter volume acceptable?12345678910
G10Is pace of narration acceptable?12345678910
G11Do written and spoken narratives match?12345678910
G12Is there any body language or eye contact to help the presentation and interaction?12345678910

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Figure 1. A new conceptual model for MC in Hong Kong and mainland China.
Figure 1. A new conceptual model for MC in Hong Kong and mainland China.
Mathematics 11 04381 g001
Table 1. Factors in previous MC models.
Table 1. Factors in previous MC models.
Factors Affecting MCModel 1Model 2Model 3Model 4Model 5Model 6Model 7
1. Project background and purpose
2. Project framework
3. Project stakeholders and the project team
4. Project overview
5. Project walkthrough
6. Project tracking and control
7. Project presentation
✓: indicates one model includes the factor.
Table 2. The background of the 15 experts.
Table 2. The background of the 15 experts.
GenderAge RangeWork AreaYears of Experiences in MCIndustry of MC Projects Involved
1Male26~30East China10IT, Engineering and Construction
2MaleOver 60Hong Kong30Manufacturing
3Female31~40East China8Quality Management
4Male51~60East China22Utilities, Enterprises, Hospitals
5Female31~40Southwest of China5Communication, Transportation Industries
6Male31~40South China5Finance, State-owned Enterprises
7Female26~30South China5Finance Industry
8Male26~30Greater Bay Area5Finance Industry
9Male51~60North China15Aviation Industry
10Male41~50Greater Bay Area20Technology, Mergers and Acquisitions, Marketing, Production
11Male51~60Hong Kong20Information Technology
12MaleOver 60Greater Bay Area24Manufacturing Industry
13Male51~60East China25Manufacturing Industry
14Female26~30South China5Strategy Management, Human Resources
15Male26~30East China5Internet, Medical Industry
Table 3. The average and sum scores from the 15 experts.
Table 3. The average and sum scores from the 15 experts.
123456789101112131415
A8.1678.0008.0008.5008.0008.5008.1679.6678.0009.1678.8336.6677.6678.3338.500
B9.4297.7149.1439.0008.4298.4299.0008.7148.5719.5718.8577.0007.8576.4298.429
C7.2866.8578.8578.4298.5717.7148.4297.5717.5719.4298.8576.7148.5713.5717.714
D8.0007.0008.0008.4298.1439.5718.5718.0008.4298.7148.7145.2868.0003.0007.000
E8.1677.0009.0008.6679.0008.6677.6677.6677.6679.0009.1676.1677.0003.8339.000
F8.1677.3338.3338.5009.1679.1677.5008.1678.00010.008.0004.1679.0003.0009.000
G6.2506.9178.0838.1679.6677.0838.0008.0837.5008.0838.6675.8337.8334.3338.333
SUM55.46450.82159.41759.69060.97659.13157.33357.86955.73863.96461.09541.83355.92932.50057.976
Table 4. The standard scores.
Table 4. The standard scores.
m1m2m3m4m5m6m7m8m9m10m11m12m13m14m15
A0.1470.1570.1350.1420.1310.1440.1420.1670.1440.1430.1450.1590.1370.2560.147
B0.1700.1520.1540.1510.1380.1430.1570.1510.1540.1500.1450.1670.1400.1980.145
C0.1310.1350.1490.1410.1410.1300.1470.1310.1360.1470.1450.1610.1530.1100.133
D0.1440.1380.1350.1410.1340.1620.1500.1380.1510.1360.1430.1260.1430.0920.121
E0.1470.1380.1510.1450.1480.1470.1340.1320.1380.1410.1500.1470.1250.1180.155
F0.1470.1440.1400.1420.1500.1550.1310.1410.1440.1560.1310.1000.1610.0920.155
G0.1130.1360.1360.1370.1590.1200.1400.1400.1350.1260.1420.1390.1400.1330.144
SUM1.0001.0001.0001.0001.0001.0001.0001.0001.0001.0001.0001.0001.0001.0001.000
Table 5. The D-S value of 7 sections from expert 1 to expert 15 (weight of section).
Table 5. The D-S value of 7 sections from expert 1 to expert 15 (weight of section).
DS2DS3DS4DS5DS6DS7DS8DS9DS10DS11DS12DS13DS14DS15
A0.1620.1520.1510.1390.1390.1390.1610.1600.1590.1610.1760.1710.2760.280
B0.1800.1930.2030.1980.1960.2150.2250.2400.2480.2520.2900.2880.3590.362
C0.1240.1290.1260.1250.1140.1170.1060.1000.1020.1040.1140.1240.0860.079
D0.1390.1300.1280.1200.1360.1420.1360.1430.1350.1340.1170.1180.0690.057
E0.1410.1500.1510.1570.1600.1500.1380.1310.1280.1350.1360.1210.0900.096
F0.1480.1450.1440.1520.1640.1500.1470.1470.1590.1450.1000.1130.0660.071
G0.1070.1020.0970.1080.0900.0880.0850.0800.0700.0690.0660.0660.0550.055
Table 6. The DS value of KPI in each section by 15 experts.
Table 6. The DS value of KPI in each section by 15 experts.
DS2DS3DS4DS5DS6DS7DS8DS9DS10DS11DS12DS13DS14DS15
AA10.2290.2290.2420.1850.2100.2250.2270.2500.2530.2350.2390.3070.2860.261
A20.1420.1420.1340.1540.1740.1660.1670.1440.1450.1180.1710.1760.2050.210
A30.1830.1830.1720.1980.2240.2130.2150.2370.2400.2510.1090.1120.1310.134
A40.1420.1420.1340.1200.0410.0340.0270.0230.0120.0140.0060.0050.0040.003
A50.1600.1600.1510.1730.1570.1310.1320.1450.1470.1710.1980.1530.1430.130
A60.1420.1420.1670.1710.1940.2310.2320.2000.2020.2110.2760.2470.2310.263
BB10.1560.1370.1350.1280.1470.1130.1140.1170.0850.0940.0890.0830.0960.096
B20.0820.0810.0710.0670.0540.0600.0600.0610.0630.0560.0530.0440.0250.020
B30.1370.1490.1310.1550.1250.1380.1540.1580.1630.1810.2210.2580.3740.372
B40.1170.1150.1140.1080.0870.0770.0600.0480.0490.0440.0470.0280.0240.019
B50.1560.1540.1680.1800.2070.2280.2290.2340.2430.2420.2300.2150.1560.172
B60.1760.1920.2110.2000.2300.2530.2820.2890.3000.2990.3240.3410.2960.296
B70.1760.1730.1710.1620.1490.1310.1020.0930.0970.0860.0350.0330.0280.025
CC10.2250.2050.2170.2470.2640.2490.1690.1540.1650.1520.1380.1110.0880.089
C20.1970.2010.2130.2440.1620.1910.1820.1660.1070.1100.1170.0940.0740.084
C30.1380.1410.1000.1140.1210.1290.1750.1600.1710.1570.1900.2180.2310.203
C40.0990.0890.0840.0770.0620.0580.0630.0580.0620.0710.0750.0690.0360.028
C50.0850.0860.0910.0840.0780.0730.0800.0830.0890.1020.1090.1250.1650.145
C60.1180.1210.1280.1020.1360.1120.0760.0800.0850.0780.0710.0740.0780.078
C70.1380.1570.1660.1330.1770.1870.2550.2990.3200.3300.3010.3100.3280.372
DD10.0750.0740.0790.0760.0780.0940.0980.1030.1230.1150.1150.1520.1570.197
D20.1050.0910.0970.0810.0840.0910.0950.0890.0840.0890.1070.1130.1550.130
D30.1400.1210.1000.0960.0990.0950.1120.0920.1090.1150.1620.1490.1030.086
D40.1230.1210.1140.1100.0790.0860.1120.1050.1000.1170.0940.0990.0680.057
D50.1750.1730.1630.1570.1620.1560.1430.1500.1790.1670.1010.1330.1820.178
D60.2010.1980.2100.2270.2340.2250.2070.2170.2590.2420.1450.1340.1850.206
D70.1800.2220.2360.2550.2640.2530.2320.2440.1450.1530.2760.2190.1500.147
EE10.1220.1080.0990.0860.0580.0700.0720.0790.0890.0770.0660.0880.0440.044
E20.1870.1850.2110.2310.2090.1930.2010.1920.2160.2110.1790.2130.2130.237
E30.1570.1560.1600.1750.1580.1470.1530.1870.2100.2060.2100.2180.2190.170
E40.1430.1420.1290.1270.1440.1520.1190.1130.0890.0970.1650.1710.1720.190
E50.1870.1850.1690.1290.1460.1350.1410.1720.1940.1900.1940.1440.1440.128
E60.2040.2250.2310.2520.2850.3020.3140.2570.2020.2200.1870.1660.2080.231
FF10.2180.2070.2150.2370.2580.2630.2850.3080.3080.2740.3790.4070.4710.510
F20.2180.2330.2420.2140.2320.2670.2890.3110.3110.3570.1970.2120.2450.212
F30.2180.2330.2420.2400.2090.2130.1800.1510.1510.1340.0740.0720.0620.061
F40.0980.0930.0970.0960.1040.0800.0770.0830.0830.0850.0940.0900.0520.057
F50.1340.1270.1030.1020.0770.0690.0670.0480.0480.0610.0840.0720.0420.036
F60.1140.1090.1010.1110.1200.1080.1030.0990.0990.0890.1710.1470.1280.124
GG10.0700.0790.0780.0810.0890.0870.0850.1010.0700.0650.0630.0510.0430.044
G20.0700.0610.0610.0560.0470.0400.0390.0460.0320.0340.0160.0090.0080.006
G30.0820.0720.0710.0730.0710.0870.0740.0880.0610.0570.0550.0500.0420.048
G40.0680.0770.0850.0880.1100.1340.1150.1210.1400.1140.1460.1350.1410.161
G50.0940.0940.1040.1070.1490.1460.1420.1310.1520.1770.1130.1300.1370.141
G60.0780.0880.0980.1010.0980.1080.1310.1380.1600.1490.1910.2200.2310.211
G70.0820.0920.0910.0940.1040.1270.1560.1630.1900.1990.2230.2560.2690.277
G80.1230.1080.0930.0770.0640.0620.0530.0490.0570.0600.0760.0440.0460.037
G90.1100.1090.0950.0970.0810.0690.0680.0530.0430.0400.0320.0260.0220.017
G100.0680.0680.0680.0700.0580.0500.0480.0380.0310.0320.0160.0130.0110.008
G110.0470.0470.0520.0480.0400.0340.0340.0310.0250.0260.0250.0260.0160.015
G120.1060.1050.1040.1070.0890.0550.0530.0420.0390.0450.0440.0400.0340.035
Table 7. The weight of KPI by 15 experts.
Table 7. The weight of KPI by 15 experts.
DS15Weight of SectionWeight of KPI
AA10.2610.2800.07295
A20.2100.05884
A30.1340.03752
A40.0030.00084
A50.1300.03631
A60.2630.07355
BB10.0960.3620.03475
B20.0200.00709
B30.3720.13466
B40.0190.00676
B50.1720.06233
B60.2960.10685
B70.0250.00908
CC10.0890.0790.00699
C20.0840.00667
C30.2030.01607
C40.0280.00218
C50.1450.01148
C60.0780.00620
C70.3720.02941
DD10.1970.0570.01131
D20.1300.00745
D30.0860.00493
D40.0570.00327
D50.1780.01022
D60.2060.01182
D70.1470.00842
EE10.0440.0960.00423
E20.2370.02283
E30.1700.01638
E40.1900.01835
E50.1280.01233
E60.2310.02229
FF10.5100.0710.03610
F20.2120.01504
F30.0610.00430
F40.0570.00401
F50.0360.00257
F60.1240.00881
GG10.0440.0550.00240
G20.0060.00034
G30.0480.00264
G40.1610.00885
G50.1410.00771
G60.2110.01156
G70.2770.01517
G80.0370.00202
G90.0170.00096
G100.0080.00046
G110.0150.00083
G120.0350.00190
Table 8. Background of the 13 cases.
Table 8. Background of the 13 cases.
IndustryTypeLocation/AreaThe Number of TeamEstimated Project DurationActual Project DurationThe Rate of Time OverrunsCustomer Satisfaction
(0–10)
Case 1EnergyStrategy managementSouthwest33 months3.5 months16.67%5
Case 2AgricultureHuman resourcesSouth35 months18 months260%3
Case 3FinanceStrategy managementSoutheast43 months3 months07
Case 4GridTechnology managementNorthwest63 months2 months−33.33%8
Case 5ManufactureTechnology training managementNorth104 weeks4.5 weeks12.5%7
Case 6FinancePost-investment management Southeast618 weeks18 months300%4
Case 7FinanceStrategy management Southeast1114 weeks12 months242.86%7
Case 8Food ManufacturingERPHong Kong614 months20 months42.86%8
Case 9WholesalesERPHong Kong816 months18 months12.5%9
Case 10Properties ManagementCorporate Performance Management (CPM)Hong Kong48 months9 months12.5%9
Case 11MedicinePerformance Excellence CoachingEast33 weeks3 weeks09
Case 12GridPerformance Excellence CoachingNorthwest36 months5.5 months−8.33%10
Case 13GridScience and technology innovationEast45 months4 months−20%10
Table 9. Project weight data of case 1.
Table 9. Project weight data of case 1.
SectionKPIWeight of KPIEvaluation from Case 1KPI Score 1Score 1 of SectionWeight %
AA10.07295 3 0.219 1.787 28.00%
A20.05884 1 0.059
A30.03752 1 0.038
A40.00084 2 0.002
A50.03631 1 0.036
A60.07355 2 0.147
sub-sum 10 0.500
BB10.03475 3 0.104 2.476 36.15%
B20.00709 2 0.014
B30.13466 2 0.269
B40.00676 0 0.000
B50.06233 3 0.187
B60.10685 3 0.321
B70.00908 0 0.000
sub-sum 13 0.895
CC10.00699 2 0.014 0.816 7.90%
C20.00667 0 0.000
C30.01607 1 0.016
C40.00218 2 0.004
C50.01148 1 0.011
C60.00620 3 0.019
C70.02941 0 0.000
sub-sum 9 0.064
DD10.01131 3 0.034 2.090 5.74%
D20.00745 3 0.022
D30.00493 3 0.015
D40.00327 1 0.003
D50.01022 1 0.010
D60.01182 3 0.035
D70.00842 0 0.000
sub-sum 14 0.120
EE10.00423 1 0.004 1.601 9.64%
E20.02283 3 0.068
E30.01638 1 0.016
E40.01835 1 0.018
E50.01233 2 0.025
E60.02229 1 0.022
sub-sum 9 0.154
FF10.03610 2 0.072 1.634 7.08%
F20.01504 2 0.030
F30.00430 1 0.004
F40.00401 1 0.004
F50.00257 2 0.005
F60.00881 0 0.000
sub-sum 8 0.116
GG10.00240 1 0.002 1.470 5.48%
G20.00034 1 0.000
G30.00264 2 0.005
G40.00885 1 0.009
G50.00771 1 0.008
G60.01156 3 0.035
G70.01517 1 0.015
G80.00202 1 0.002
G90.00096 1 0.001
G100.00046 1 0.000
G110.00083 1 0.001
G120.00190 1 0.002
sub-sum0.07295 15 0.081
SUM 11.875 1.000
Table 10. Comparison of weight scores and client satisfaction of 13 cases.
Table 10. Comparison of weight scores and client satisfaction of 13 cases.
CaseABCDEFGSUMClient Satisfaction (0–10)
11.7872.4780.8162.0901.6011.6341.47011.8765
21.9971.7781.1892.0901.6011.1241.47011.2493
32.5262.9751.7372.0901.6012.0041.47014.4037
42.7292.1411.7100.5511.3422.7221.47012.6658
52.6052.2491.1291.0921.5492.8461.04812.5197
62.0811.7551.6801.3151.8291.7420.81511.2194
72.0032.3132.6512.5582.9561.0621.45514.9987
80.2630.8790.3460.6350.8720.3050.8634.1538
91.7362.7062.4782.3722.5552.3051.16115.3159
103.0003.0003.0002.9433.0002.8761.20919.0289
112.8703.0002.8553.0003.0003.0001.47019.1959
123.0003.0003.0003.0003.0003.0001.47019.47010
133.0002.9802.7433.0003.0003.0001.47019.19310
Table 11. The benchmarks for assessing MC projects.
Table 11. The benchmarks for assessing MC projects.
SUM Score RangeThe Number of Section Points > 2 (Section A–F)Project Degree of Success
<12<2Failure projects
12–153–4Projects with fair performance and client satisfaction
>155–6Projects with outstanding performance
Table 12. The assessment results for 13 cases under 3 categories.
Table 12. The assessment results for 13 cases under 3 categories.
Degrees of SuccessCaseABCDEFGSUMCustomer Satisfaction
(0–10)
Unsatisfied cases11.7872.4780.8162.0901.6011.6341.47011.8765
21.9971.7781.1892.0901.6011.1241.47011.2493
62.0811.7551.6801.3151.8291.7420.81511.2194
80.2630.8790.3460.6350.8720.3050.8634.1538
Fair cases32.5262.9751.7372.0901.6012.0041.47014.4037
42.7292.1411.7100.5511.3422.7221.47012.6658
52.6052.2491.1291.0921.5492.8461.04812.5197
72.0032.3132.6512.5582.9561.0621.45514.9987
Satisfactory cases91.7362.7062.4782.3722.5552.3051.16115.3159
103.0003.0003.0002.9433.0002.8761.20919.0289
112.8703.0002.8553.0003.0003.0001.47019.1959
123.0003.0003.0003.0003.0003.0001.47019.47010
133.0002.9802.7433.0003.0003.0001.47019.19310
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Sun, H.; Ni, W.; Huang, L. Fuzzy Assessment of Management Consulting Projects: Model Validation and Case Studies. Mathematics 2023, 11, 4381. https://doi.org/10.3390/math11204381

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Sun H, Ni W, Huang L. Fuzzy Assessment of Management Consulting Projects: Model Validation and Case Studies. Mathematics. 2023; 11(20):4381. https://doi.org/10.3390/math11204381

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Sun, Hongyi, Wenbin Ni, and Lanxuan Huang. 2023. "Fuzzy Assessment of Management Consulting Projects: Model Validation and Case Studies" Mathematics 11, no. 20: 4381. https://doi.org/10.3390/math11204381

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