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Hauptverfasser: Saxena, Rahul, Kim, Taeyoun, Mehra, Aman, Baek, Christina, Kolter, Zico, Raghunathan, Aditi
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2404.01542
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author Saxena, Rahul
Kim, Taeyoun
Mehra, Aman
Baek, Christina
Kolter, Zico
Raghunathan, Aditi
author_facet Saxena, Rahul
Kim, Taeyoun
Mehra, Aman
Baek, Christina
Kolter, Zico
Raghunathan, Aditi
contents Estimating the out-of-distribution performance in regimes where labels are scarce is critical to safely deploy foundation models. Recently, it was shown that ensembles of neural networks observe the phenomena "agreement-on-the-line", which can be leveraged to reliably predict OOD performance without labels. However, in contrast to classical neural networks that are trained on in-distribution data from scratch for numerous epochs, foundation models undergo minimal finetuning from heavily pretrained weights, which may reduce the ensemble diversity needed to observe agreement-on-the-line. In our work, we demonstrate that when lightly finetuning multiple runs from a single foundation model, the choice of randomness during training (linear head initialization, data ordering, and data subsetting) can lead to drastically different levels of agreement-on-the-line in the resulting ensemble. Surprisingly, only random head initialization is able to reliably induce agreement-on-the-line in finetuned foundation models across vision and language benchmarks. Second, we demonstrate that ensembles of multiple foundation models pretrained on different datasets but finetuned on the same task can also show agreement-on-the-line. In total, by careful construction of a diverse ensemble, we can utilize agreement-on-the-line-based methods to predict the OOD performance of foundation models with high precision.
format Preprint
id arxiv_https___arxiv_org_abs_2404_01542
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Predicting the Performance of Foundation Models via Agreement-on-the-Line
Saxena, Rahul
Kim, Taeyoun
Mehra, Aman
Baek, Christina
Kolter, Zico
Raghunathan, Aditi
Machine Learning
Estimating the out-of-distribution performance in regimes where labels are scarce is critical to safely deploy foundation models. Recently, it was shown that ensembles of neural networks observe the phenomena "agreement-on-the-line", which can be leveraged to reliably predict OOD performance without labels. However, in contrast to classical neural networks that are trained on in-distribution data from scratch for numerous epochs, foundation models undergo minimal finetuning from heavily pretrained weights, which may reduce the ensemble diversity needed to observe agreement-on-the-line. In our work, we demonstrate that when lightly finetuning multiple runs from a single foundation model, the choice of randomness during training (linear head initialization, data ordering, and data subsetting) can lead to drastically different levels of agreement-on-the-line in the resulting ensemble. Surprisingly, only random head initialization is able to reliably induce agreement-on-the-line in finetuned foundation models across vision and language benchmarks. Second, we demonstrate that ensembles of multiple foundation models pretrained on different datasets but finetuned on the same task can also show agreement-on-the-line. In total, by careful construction of a diverse ensemble, we can utilize agreement-on-the-line-based methods to predict the OOD performance of foundation models with high precision.
title Predicting the Performance of Foundation Models via Agreement-on-the-Line
topic Machine Learning
url https://arxiv.org/abs/2404.01542