cs.AI updates on arXiv.org 07月21日 12:06
Using LLMs to identify features of personal and professional skills in an open-response situational judgment test
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本文提出利用大型语言模型从情境判断测试(SJT)中提取特征,以实现个人和职业技能的自动化评分,为未来技能评估提供新思路。

arXiv:2507.13881v1 Announce Type: cross Abstract: Academic programs are increasingly recognizing the importance of personal and professional skills and their critical role alongside technical expertise in preparing students for future success in diverse career paths. With this growing demand comes the need for scalable systems to measure, evaluate, and develop these skills. Situational Judgment Tests (SJTs) offer one potential avenue for measuring these skills in a standardized and reliable way, but open-response SJTs have traditionally relied on trained human raters for evaluation, presenting operational challenges to delivering SJTs at scale. Past attempts at developing NLP-based scoring systems for SJTs have fallen short due to issues with construct validity of these systems. In this article, we explore a novel approach to extracting construct-relevant features from SJT responses using large language models (LLMs). We use the Casper SJT to demonstrate the efficacy of this approach. This study sets the foundation for future developments in automated scoring for personal and professional skills.

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大型语言模型 情境判断测试 技能评估 自动化评分 职业发展
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