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Autori principali: Dominguez-Olmedo, Ricardo, Dorner, Florian E., Hardt, Moritz
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2407.07890
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author Dominguez-Olmedo, Ricardo
Dorner, Florian E.
Hardt, Moritz
author_facet Dominguez-Olmedo, Ricardo
Dorner, Florian E.
Hardt, Moritz
contents We study a fundamental problem in the evaluation of large language models that we call training on the test task. Unlike wrongful practices like training on the test data, leakage, or data contamination, training on the test task is not a malpractice. Rather, the term describes a growing set of practices that utilize knowledge about evaluation tasks at training time. We demonstrate that training on the test task confounds both relative model evaluations and claims about emergent capabilities. We argue that the seeming superiority of one model family over another may be explained by a different degree of training on the test task. To this end, we propose an effective method to adjust for the effect of training on the test task on benchmark evaluations. Put simply, to fine-tune each model under comparison on the same task-relevant data prior to evaluation. We then show that instances of emergent behavior disappear gradually as models train on the test task. Our work promotes a new perspective on the evaluation of large language models, with broad implications for benchmarking and the study of emergent capabilities.
format Preprint
id arxiv_https___arxiv_org_abs_2407_07890
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Training on the Test Task Confounds Evaluation and Emergence
Dominguez-Olmedo, Ricardo
Dorner, Florian E.
Hardt, Moritz
Computation and Language
Artificial Intelligence
Machine Learning
We study a fundamental problem in the evaluation of large language models that we call training on the test task. Unlike wrongful practices like training on the test data, leakage, or data contamination, training on the test task is not a malpractice. Rather, the term describes a growing set of practices that utilize knowledge about evaluation tasks at training time. We demonstrate that training on the test task confounds both relative model evaluations and claims about emergent capabilities. We argue that the seeming superiority of one model family over another may be explained by a different degree of training on the test task. To this end, we propose an effective method to adjust for the effect of training on the test task on benchmark evaluations. Put simply, to fine-tune each model under comparison on the same task-relevant data prior to evaluation. We then show that instances of emergent behavior disappear gradually as models train on the test task. Our work promotes a new perspective on the evaluation of large language models, with broad implications for benchmarking and the study of emergent capabilities.
title Training on the Test Task Confounds Evaluation and Emergence
topic Computation and Language
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2407.07890