Contrastive Loss
Contrastive loss is a machine learning technique that improves model performance by learning representations that maximize the similarity between similar data points (e.g., images of the same object) while minimizing similarity between dissimilar points. Current research focuses on refining contrastive loss functions, often incorporating additional constraints or integrating them with other learning paradigms like self-supervised learning and semi-supervised learning, and applying them to various architectures including transformers and autoencoders. This approach has proven effective across diverse applications, including image classification, speaker verification, and graph anomaly detection, leading to improved accuracy and robustness in various machine learning tasks.
Papers
Finetune like you pretrain: Improved finetuning of zero-shot vision models
Sachin Goyal, Ananya Kumar, Sankalp Garg, Zico Kolter, Aditi Raghunathan
An Effective Deployment of Contrastive Learning in Multi-label Text Classification
Nankai Lin, Guanqiu Qin, Jigang Wang, Aimin Yang, Dong Zhou
CL4CTR: A Contrastive Learning Framework for CTR Prediction
Fangye Wang, Yingxu Wang, Dongsheng Li, Hansu Gu, Tun Lu, Peng Zhang, Ning Gu
A Novel Semisupervised Contrastive Regression Framework for Forest Inventory Mapping with Multisensor Satellite Data
Shaojia Ge, Hong Gu, Weimin Su, Anne Lönnqvist, Oleg Antropov
Hub-VAE: Unsupervised Hub-based Regularization of Variational Autoencoders
Priya Mani, Carlotta Domeniconi
Improving Pixel-Level Contrastive Learning by Leveraging Exogenous Depth Information
Ahmed Ben Saad, Kristina Prokopetc, Josselin Kherroubi, Axel Davy, Adrien Courtois, Gabriele Facciolo
Contrastive Losses Are Natural Criteria for Unsupervised Video Summarization
Zongshang Pang, Yuta Nakashima, Mayu Otani, Hajime Nagahara
The Role of Local Alignment and Uniformity in Image-Text Contrastive Learning on Medical Images
Philip Müller, Georgios Kaissis, Daniel Rueckert
Contrastive learning for regression in multi-site brain age prediction
Carlo Alberto Barbano, Benoit Dufumier, Edouard Duchesnay, Marco Grangetto, Pietro Gori