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Main Authors: Oko, Kazusato, Lin, Licong, Cai, Yuhang, Mei, Song
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.04641
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author Oko, Kazusato
Lin, Licong
Cai, Yuhang
Mei, Song
author_facet Oko, Kazusato
Lin, Licong
Cai, Yuhang
Mei, Song
contents Multi-modal generative AI systems, such as those combining vision and language, rely on contrastive pre-training to learn representations across different modalities. While their practical benefits are widely acknowledged, a rigorous theoretical understanding of the contrastive pre-training framework remains limited. This paper develops a theoretical framework to explain the success of contrastive pre-training in downstream tasks, such as zero-shot classification, conditional diffusion models, and vision-language models. We introduce the concept of approximate sufficient statistics, a generalization of the classical sufficient statistics, and show that near-minimizers of the contrastive pre-training loss are approximately sufficient, making them adaptable to diverse downstream tasks. We further propose the Joint Generative Hierarchical Model for the joint distribution of images and text, showing that transformers can efficiently approximate relevant functions within this model via belief propagation. Building on this framework, we derive sample complexity guarantees for multi-modal learning based on contrastive pre-trained representations. Numerical simulations validate these theoretical findings, demonstrating the strong generalization performance of contrastively pre-trained transformers in various multi-modal tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2501_04641
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Statistical Theory of Contrastive Pre-training and Multimodal Generative AI
Oko, Kazusato
Lin, Licong
Cai, Yuhang
Mei, Song
Machine Learning
Statistics Theory
Multi-modal generative AI systems, such as those combining vision and language, rely on contrastive pre-training to learn representations across different modalities. While their practical benefits are widely acknowledged, a rigorous theoretical understanding of the contrastive pre-training framework remains limited. This paper develops a theoretical framework to explain the success of contrastive pre-training in downstream tasks, such as zero-shot classification, conditional diffusion models, and vision-language models. We introduce the concept of approximate sufficient statistics, a generalization of the classical sufficient statistics, and show that near-minimizers of the contrastive pre-training loss are approximately sufficient, making them adaptable to diverse downstream tasks. We further propose the Joint Generative Hierarchical Model for the joint distribution of images and text, showing that transformers can efficiently approximate relevant functions within this model via belief propagation. Building on this framework, we derive sample complexity guarantees for multi-modal learning based on contrastive pre-trained representations. Numerical simulations validate these theoretical findings, demonstrating the strong generalization performance of contrastively pre-trained transformers in various multi-modal tasks.
title A Statistical Theory of Contrastive Pre-training and Multimodal Generative AI
topic Machine Learning
Statistics Theory
url https://arxiv.org/abs/2501.04641