LGJun 3, 2024

SAVA: Scalable Learning-Agnostic Data Valuation

arXiv:2406.01130v24 citations
Originality Incremental advance
AI Analysis

This work addresses the scalability limitation of prior data valuation methods for machine learning practitioners dealing with large, noisy datasets, though it is incremental as it builds directly on LAVA.

The authors tackled the problem of scaling data valuation for noisy training datasets by proposing SAVA, a scalable variant of the LAVA method that processes data in batches, enabling it to handle millions of data points without sacrificing performance.

Selecting data for training machine learning models is crucial since large, web-scraped, real datasets contain noisy artifacts that affect the quality and relevance of individual data points. These noisy artifacts will impact model performance. We formulate this problem as a data valuation task, assigning a value to data points in the training set according to how similar or dissimilar they are to a clean and curated validation set. Recently, LAVA demonstrated the use of optimal transport (OT) between a large noisy training dataset and a clean validation set, to value training data efficiently, without the dependency on model performance. However, the LAVA algorithm requires the entire dataset as an input, this limits its application to larger datasets. Inspired by the scalability of stochastic (gradient) approaches which carry out computations on batches of data points instead of the entire dataset, we analogously propose SAVA, a scalable variant of LAVA with its computation on batches of data points. Intuitively, SAVA follows the same scheme as LAVA which leverages the hierarchically defined OT for data valuation. However, while LAVA processes the whole dataset, SAVA divides the dataset into batches of data points, and carries out the OT problem computation on those batches. Moreover, our theoretical derivations on the trade-off of using entropic regularization for OT problems include refinements of prior work. We perform extensive experiments, to demonstrate that SAVA can scale to large datasets with millions of data points and does not trade off data valuation performance.

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