When LLM meets Fuzzy-TOPSIS for Personnel Selection through Automated Profile Analysis
Shahria Hoque, Ahmed Akib Jawad Karim, Md. Golam Rabiul Alam, and Nirjhar Gope

TL;DR
This paper introduces an automated personnel selection system combining NLP and fuzzy TOPSIS to evaluate and rank software engineering candidates, achieving high accuracy and reducing bias.
Contribution
It develops a novel LLM-TOPSIS framework integrating fuzzy logic with large language models for improved candidate assessment and ranking.
Findings
Achieved up to 91% accuracy in candidate ranking.
Demonstrated the effectiveness of fuzzy TOPSIS in handling assessment ambiguity.
Showcased the potential of NLP and decision-making integration in recruitment.
Abstract
In this highly competitive employment environment, the selection of suitable personnel is essential for organizational success. This study presents an automated personnel selection system that utilizes sophisticated natural language processing (NLP) methods to assess and rank software engineering applicants. A distinctive dataset was created by aggregating LinkedIn profiles that include essential features such as education, work experience, abilities, and self-introduction, further enhanced with expert assessments to function as standards. The research combines large language models (LLMs) with multicriteria decision-making (MCDM) theory to develop the LLM-TOPSIS framework. In this context, we utilized the TOPSIS method enhanced by fuzzy logic (Fuzzy TOPSIS) to address the intrinsic ambiguity and subjectivity in human assessments. We utilized triangular fuzzy numbers (TFNs) to describe…
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Taxonomy
TopicsEmployer Branding and e-HRM · Multi-Criteria Decision Making · AI and HR Technologies
