Chaos is a Ladder: A New Theoretical Understanding of Contrastive Learning via Augmentation Overlap

03/25/2022
by   Yifei Wang, et al.
6

Recently, contrastive learning has risen to be a promising approach for large-scale self-supervised learning. However, theoretical understanding of how it works is still unclear. In this paper, we propose a new guarantee on the downstream performance without resorting to the conditional independence assumption that is widely adopted in previous work but hardly holds in practice. Our new theory hinges on the insight that the support of different intra-class samples will become more overlapped under aggressive data augmentations, thus simply aligning the positive samples (augmented views of the same sample) could make contrastive learning cluster intra-class samples together. Based on this augmentation overlap perspective, theoretically, we obtain asymptotically closed bounds for downstream performance under weaker assumptions, and empirically, we propose an unsupervised model selection metric ARC that aligns well with downstream accuracy. Our theory suggests an alternative understanding of contrastive learning: the role of aligning positive samples is more like a surrogate task than an ultimate goal, and the overlapped augmented views (i.e., the chaos) create a ladder for contrastive learning to gradually learn class-separated representations. The code for computing ARC is available at https://github.com/zhangq327/ARC.

READ FULL TEXT
research
09/15/2021

SupCL-Seq: Supervised Contrastive Learning for Downstream Optimized Sequence Representations

While contrastive learning is proven to be an effective training strateg...
research
06/01/2022

Contrastive Principal Component Learning: Modeling Similarity by Augmentation Overlap

Traditional self-supervised contrastive learning methods learn embedding...
research
11/04/2020

Learning and Evaluating Representations for Deep One-class Classification

We present a two-stage framework for deep one-class classification. We f...
research
07/12/2023

Contrastive Learning for Conversion Rate Prediction

Conversion rate (CVR) prediction plays an important role in advertising ...
research
03/04/2023

Towards a Unified Theoretical Understanding of Non-contrastive Learning via Rank Differential Mechanism

Recently, a variety of methods under the name of non-contrastive learnin...
research
06/20/2023

Understanding Contrastive Learning Through the Lens of Margins

Self-supervised learning, or SSL, holds the key to expanding the usage o...
research
01/04/2022

Bringing Your Own View: Graph Contrastive Learning without Prefabricated Data Augmentations

Self-supervision is recently surging at its new frontier of graph learni...

Please sign up or login with your details

Forgot password? Click here to reset