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人材採用を革新するエージェントAI:LLMによる候補者評価
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ポイント
- 大規模言語モデル(LLM)を活用し、採用における候補者評価を自動化するモジュール型フレームワークを提示する。
- 従来のATSツールと異なり、LLMが生成した役割特有の評価基準とマルチエージェントアーキテクチャで詳細な評価を実現する点が新しい。
- 候補者のランキング付けに、リストワイズLLM preference modelingを応用し、透明性が高く効率的な評価を実現した。
Abstract
In this work, we present a modular and interpretable framework that uses Large Language Models (LLMs) to automate candidate assessment in recruitment. The system integrates diverse sources, including job descriptions, CVs, interview transcripts, and HR feedback; to generate structured evaluation reports that mirror expert judgment. Unlike traditional ATS tools that rely on keyword matching or shallow scoring, our approach employs role-specific, LLM-generated rubrics and a multi-agent architecture to perform fine-grained, criteria-driven evaluations. The framework outputs detailed assessment reports, candidate comparisons, and ranked recommendations that are transparent, auditable, and suitable for real-world hiring workflows. Beyond rubric-based analysis, we introduce an LLM-Driven Active Listwise Tournament mechanism for candidate ranking. Instead of noisy pairwise comparisons or inconsistent independent scoring, the LLM ranks small candidate subsets (mini-tournaments), and these listwise permutations are aggregated using a Plackett-Luce model. An active-learning loop selects the most informative subsets, producing globally coherent and sample-efficient rankings. This adaptation of listwise LLM preference modeling (previously explored in financial asset ranking) provides a principled and highly interpretable methodology for large-scale candidate ranking in talent acquisition.
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