Understanding the Gain from Data Filtering in Multimodal Contrastive Learning
Abstract
The success of modern multimodal representation learning relies on internet-scale datasets. Due to the low quality of a large fraction of raw web data, data curation has become a critical step in the training pipeline. Filtering using a trained model (i.e., teacher-based filtering) has emerged as a successful solution, leveraging a pre-trained model to compute quality scores. To explain the empirical success of teacher-based filtering, we characterize the performance of filtered contrastive learning under the standard bimodal data generation model. Denoting η∈(0,1] as the fraction of data with correctly matched modalities among n paired samples, we utilize a linear contrastive learning setup to show a provable benefit of data filtering: (i) the error without filtering is upper and lower bounded by 1η n, and (ii) the error with teacher-based filtering is upper bounded by 1η n in the large η regime, and by 1n in the small η regime.
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