SELECTION OF THE STAFF WITH THE USE OF SOFT COMPUTING
Abstract and keywords
Abstract (English):
In a changing environment and inaccurate information, it is difficult to get an unambiguous answer about the quality of the candidate for the position, based only on the results of viewing the applicant’s questionnaires. As a consequence, recently there has been a trend towards the use of soft computing (neural networks, fuzzy logic and evolutionary computations) in tasks personnel’s selection. The article presents the solution of such a problem using the methods of soft computing for a software company. We use a neural-fuzzy system such as the ANFIS (Adaptive Network-Based Fuzzy Inference System) to quantify the candidate’s quality. The idea of neural-fuzzy systems is to determine the parameters of fuzzy systems through training methods used in neural networks. The most important advantage of this system lies in the automatic creation of the rules base. After completing the training, we receive an assessment of the quality of the candidate in the form of a scoring on a 10-point scale. In addition, we derive a regression equation that relates the candidate’s quality with the input variables.

Keywords:
selection of personnel, soft computing, neural networks, fuzzy logic, neural-fuzzy system.
Text

Для каждого предприятия залогом успешного функционирования являются ресурсы, включающие финансы, сырье, оборудование и персонал.

References

1. Khorami M., Ehsani R. Application of Multi Criteria Decision Making approaches for personnel selection problem: A survey. Int. Journ. of Engineering Research and Applications, 2015. vol. 5, no. 5, pp. 14-29.

2. Afshari A., Nikoli M., Soskalo D. Applications of fuzzy decision making for personnel selection problem - a review. Journ. of Engineering Management and Competitiveness, 2014, vol. 4, no. 2, pp.68-77.

3. Drigas A., Kouremenos S., Vrettos S. An expert system for job matching of the unemployed. Expert Systems with Applications, 2004, vol. 26, pp. 217-224.

4. Kaynak S., Evirgen H., Kaynak B. Adaptive neuro-fuzzy inference system in predicting the success of student’s in a particular course. Int. Journ. of Computer Theory and Engineering, 2015, vol. 7, no. 1, pp. 34-39.

5. Chen C.T. Extensions of the TOPSIS for group decisionmaking under fuzzy environment. Fuzzy Sets and Systems, 2000, vol. 114, no. 1, pp. 1-9.

6. Huang L.C., Huang K.S., Huang H.P., Jaw B.S., 2004. Applying fuzzy neural network in human resource selection system. IEEE Annual Meeting of the Fuzzy Information. Processing NAFIPS ‘04, 2004, vol. 1, rr. 108-116.

7. Dejiang W., Extension of TOPSIS Method for R and D Personnel Selection Problem with Interval Grey Number. Proceedings of the MASS ‘09 International Conference on Management and Service Science, 2009, Wuhan, China, pp. 1-4.

8. Dursun M., Karsak E. A fuzzy MCDM approach for personnel selection. Expert Systems with Applications, 2010, vol. 37, no. 6, pp. 4324-4330.

9. Rouyendegh B.D., Erkan T.E. An application of the fuzzy ELECTRE method for academic staff selection. Human Factors and Ergonomics in Manufacturing and Service Industries, 2013, vol. 23, no. 2, pp. 107-115.

10. Zade L.A. Rol’ myagkikh vychisleniy i nechetkoy logiki v ponimanii, konstruirovanii i razvitii informatsionnykh intellektual’nykh system [The role of soft computing and fuzzy logic in understanding, designing and developing information intellectual systems]. Novosti iskusstvennogo intellekta [News of artificial intelligence]. 2001, I. 2-3, pp. 7-11.

11. Jang J-S. R., Sun C-T., Mizutani E. Neuro-Fuzzy and Soft Computing: A Computational Approach to Learning and Machine Intelligence. Prentice-Hall, 1997, 640 p.

12. Mewada K.M., Sinhal A., Verma B. Adaptive neuro-fuzzy inference system (ANFIS) based software evaluation. Int. Journ. of Computer Science Issues, 2013, vol. 10, no. 1, pp. 244-250.

13. Abbasi A., Asgari M. Supplier selection using adaptive neurofuzzy inference system and fuzzy delphi. Int. Journ. of Operations and Logistics Management, 2014, vol. 3, no. 4, pp. 351-371.

14. Saghati A., Zadkarim S., Emari H. Employee commitment prediction in civil projects using adaptive neuro-fuzzy inference system. Journ. of Current Research in Science, 2016, vol. 2, pp. 326-337.

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