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Training on the Test Task Confounds Evaluation and Emergence

2024

Conference Paper

sf


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 malpractice. Rather, the term describes a growing set of techniques to include task-relevant data in the pretraining stage of a language model. 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 training on the test task by fine-tuning each model under comparison on the same task-relevant data before evaluation. We then show that instances of emergent behavior largely vanish once we adjust for training on the test task. This also applies to reported instances of emergent behavior that cannot be explained by the choice of evaluation metric. Our work promotes a new perspective on the evaluation of large language models with broad implications for benchmarking and the study of emergent capabilities.

Author(s): Dominguez-Olmedo, Ricardo and Dorner, Florian E and Hardt, Moritz
Book Title: arXiv preprint arXiv:2407.07890
Year: 2024

Department(s): Social Foundations of Computation
Bibtex Type: Conference Paper (conference)

State: Submitted

Links: ArXiv

BibTex

@conference{dominguez2024training,
  title = {Training on the Test Task Confounds Evaluation and Emergence},
  author = {Dominguez-Olmedo, Ricardo and Dorner, Florian E and Hardt, Moritz},
  booktitle = {arXiv preprint arXiv:2407.07890},
  year = {2024},
  doi = {}
}