Enhancing Cybersecurity Through Intelligent Conversations : A Chatbot Approach

Authors

  • Asoke Nath Department of Computer Science and Research, St. Xavier’s College (Autonomous), Kolkata, West Bengal, India Author
  • Prashant Gomes Department of Computer Science and Research, St. Xavier’s College (Autonomous), Kolkata, West Bengal, India Author
  • Sanchita Paul Department of Computer Science and Research, St. Xavier’s College (Autonomous), Kolkata, West Bengal, India Author

DOI:

https://doi.org/10.32628/CSEIT2410323

Keywords:

Retrieval-Based, Chatbot, Cybersecurity, Natural Language Processing, Deep Learning, Pattern Recognition, Contextual Understanding

Abstract

Retrieval-based chatbots are fundamental tools in computer-mediated conversations. They use stored responses to act as virtual assistants, facilitating smooth interactions between users and computers. This examination investigates into how these chatbots work, emphasizing their crucial role in modern communication. They not only enable human-like interactions but also establish strong question-answer systems. Additionally, their ability to adapt to different contexts and user queries makes them invaluable in today's digital landscape. In a world where communication patterns are constantly evolving, retrieval-based chatbots are essential for bridging gaps in understanding and improving human-computer interaction. They excel at interpreting and responding to queries across various fields, from customer service to education. As technology advances, retrieval-based chatbots will continue to shape the future of conversational interfaces, providing dynamic platforms for interacting with machines. Their significance in digital communication is bound to increase, setting their status as indispensable assets in the technological landscape.

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Published

15-05-2024

Issue

Section

Research Articles

How to Cite

[1]
Asoke Nath, Prashant Gomes, and Sanchita Paul, “Enhancing Cybersecurity Through Intelligent Conversations : A Chatbot Approach”, Int. J. Sci. Res. Comput. Sci. Eng. Inf. Technol, vol. 10, no. 3, pp. 204–219, May 2024, doi: 10.32628/CSEIT2410323.

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