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Main Authors: Sun, Yifan, Shen, Jingyan, Kwon, Yongchan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.03572
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author Sun, Yifan
Shen, Jingyan
Kwon, Yongchan
author_facet Sun, Yifan
Shen, Jingyan
Kwon, Yongchan
contents Data valuation has emerged as a powerful framework for quantifying each datum's contribution to the training of a machine learning model. However, it is crucial to recognize that the quality of cells within a single data point can vary greatly in practice. For example, even in the case of an abnormal data point, not all cells are necessarily noisy. The single scalar score assigned by existing data valuation methods blurs the distinction between noisy and clean cells of a data point, making it challenging to interpret the data values. In this paper, we propose 2D-OOB, an out-of-bag estimation framework for jointly determining helpful (or detrimental) samples as well as the particular cells that drive them. Our comprehensive experiments demonstrate that 2D-OOB achieves state-of-the-art performance across multiple use cases while being exponentially faster. Specifically, 2D-OOB shows promising results in detecting and rectifying fine-grained outliers at the cell level, and localizing backdoor triggers in data poisoning attacks.
format Preprint
id arxiv_https___arxiv_org_abs_2408_03572
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle 2D-OOB: Attributing Data Contribution Through Joint Valuation Framework
Sun, Yifan
Shen, Jingyan
Kwon, Yongchan
Machine Learning
Artificial Intelligence
Data valuation has emerged as a powerful framework for quantifying each datum's contribution to the training of a machine learning model. However, it is crucial to recognize that the quality of cells within a single data point can vary greatly in practice. For example, even in the case of an abnormal data point, not all cells are necessarily noisy. The single scalar score assigned by existing data valuation methods blurs the distinction between noisy and clean cells of a data point, making it challenging to interpret the data values. In this paper, we propose 2D-OOB, an out-of-bag estimation framework for jointly determining helpful (or detrimental) samples as well as the particular cells that drive them. Our comprehensive experiments demonstrate that 2D-OOB achieves state-of-the-art performance across multiple use cases while being exponentially faster. Specifically, 2D-OOB shows promising results in detecting and rectifying fine-grained outliers at the cell level, and localizing backdoor triggers in data poisoning attacks.
title 2D-OOB: Attributing Data Contribution Through Joint Valuation Framework
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2408.03572