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Main Authors: Liu, Yunting, Bhandari, Shreya, Pardos, Zachary A.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2407.10899
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author Liu, Yunting
Bhandari, Shreya
Pardos, Zachary A.
author_facet Liu, Yunting
Bhandari, Shreya
Pardos, Zachary A.
contents Effective educational measurement relies heavily on the curation of well-designed item pools (i.e., possessing the right psychometric properties). However, item calibration is time-consuming and costly, requiring a sufficient number of respondents for the response process. We explore using six different LLMs (GPT-3.5, GPT-4, Llama 2, Llama 3, Gemini-Pro, and Cohere Command R Plus) and various combinations of them using sampling methods to produce responses with psychometric properties similar to human answers. Results show that some LLMs have comparable or higher proficiency in College Algebra than college students. No single LLM mimics human respondents due to narrow proficiency distributions, but an ensemble of LLMs can better resemble college students' ability distribution. The item parameters calibrated by LLM-Respondents have high correlations (e.g. > 0.8 for GPT-3.5) compared to their human calibrated counterparts, and closely resemble the parameters of the human subset (e.g. 0.02 Spearman correlation difference). Several augmentation strategies are evaluated for their relative performance, with resampling methods proving most effective, enhancing the Spearman correlation from 0.89 (human only) to 0.93 (augmented human).
format Preprint
id arxiv_https___arxiv_org_abs_2407_10899
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Leveraging LLM-Respondents for Item Evaluation: a Psychometric Analysis
Liu, Yunting
Bhandari, Shreya
Pardos, Zachary A.
Computers and Society
Artificial Intelligence
Computation and Language
Effective educational measurement relies heavily on the curation of well-designed item pools (i.e., possessing the right psychometric properties). However, item calibration is time-consuming and costly, requiring a sufficient number of respondents for the response process. We explore using six different LLMs (GPT-3.5, GPT-4, Llama 2, Llama 3, Gemini-Pro, and Cohere Command R Plus) and various combinations of them using sampling methods to produce responses with psychometric properties similar to human answers. Results show that some LLMs have comparable or higher proficiency in College Algebra than college students. No single LLM mimics human respondents due to narrow proficiency distributions, but an ensemble of LLMs can better resemble college students' ability distribution. The item parameters calibrated by LLM-Respondents have high correlations (e.g. > 0.8 for GPT-3.5) compared to their human calibrated counterparts, and closely resemble the parameters of the human subset (e.g. 0.02 Spearman correlation difference). Several augmentation strategies are evaluated for their relative performance, with resampling methods proving most effective, enhancing the Spearman correlation from 0.89 (human only) to 0.93 (augmented human).
title Leveraging LLM-Respondents for Item Evaluation: a Psychometric Analysis
topic Computers and Society
Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2407.10899