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Main Authors: Elbakian, Karl, Carton, Samuel
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.14095
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author Elbakian, Karl
Carton, Samuel
author_facet Elbakian, Karl
Carton, Samuel
contents A key aspect of alignment is the proper use of within-document evidence to construct document-level decisions. We analyze the relationship between the retrieval and interpretation of within-document evidence for large language model in a few-shot setting. Specifically, we measure the extent to which model prediction errors are associated with evidence retrieval errors with respect to gold-standard human-annotated extractive evidence for five datasets, using two popular closed proprietary models. We perform two ablation studies to investigate when both label prediction and evidence retrieval errors can be attributed to qualities of the relevant evidence. We find that there is a strong empirical relationship between model prediction and evidence retrieval error, but that evidence retrieval error is mostly not associated with evidence interpretation error--a hopeful sign for downstream applications built on this mechanism.
format Preprint
id arxiv_https___arxiv_org_abs_2502_14095
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Retrieving Versus Understanding Extractive Evidence in Few-Shot Learning
Elbakian, Karl
Carton, Samuel
Computation and Language
A key aspect of alignment is the proper use of within-document evidence to construct document-level decisions. We analyze the relationship between the retrieval and interpretation of within-document evidence for large language model in a few-shot setting. Specifically, we measure the extent to which model prediction errors are associated with evidence retrieval errors with respect to gold-standard human-annotated extractive evidence for five datasets, using two popular closed proprietary models. We perform two ablation studies to investigate when both label prediction and evidence retrieval errors can be attributed to qualities of the relevant evidence. We find that there is a strong empirical relationship between model prediction and evidence retrieval error, but that evidence retrieval error is mostly not associated with evidence interpretation error--a hopeful sign for downstream applications built on this mechanism.
title Retrieving Versus Understanding Extractive Evidence in Few-Shot Learning
topic Computation and Language
url https://arxiv.org/abs/2502.14095