对比自监督学习技术是一种很有前途的方法,它通过学习对使两种事物相似或不同的东西进行编码来构建表示。Contrastive learning有很多文章介绍,区别于生成式的自监督方法,如AutoEncoder通过重建输入信号获取中间表示,Contrastive Methods通过在特征空间建立度量,学习判别不同类型的输入,不需要重建信号而又充分挖掘了无标签数据之间的特征差异。
对比学习通过同时最大化同一图像的不同变换视图(例如剪裁,翻转,颜色变换等)之间的一致性,以及最小化不同图像的变换视图之间的一致性来学习的。简单来说,就是对比学习要做到相同的图像经过各类变换之后,依然能识别出是同一张图像,所以要最大化各类变换后图像的相似度(因为都是同一个图像得到的)。相反,如果是不同的图像(即使经过各种变换可能看起来会很类似),就要最小化它们之间的相似度。通过这样的对比训练,编码器(encoder)能学习到图像的更高层次的通用特征 (image-level representations),而不是图像级别的生成模型(pixel-level generation)。
2020
•Contrastive Representation Learning: A Framework and Review, Phuc H. Le-Khac
•Supervised Contrastive Learning, Prannay Khosla, 2020, [pytorch*]
•A Simple Framework for Contrastive Learning of Visual Representations, Ting Chen, 2020, [pytroch, tensorflow*]
•Improved Baselines with Momentum Contrastive Learning, Xinlei Chen, 2020, [tensorflow]
•Contrastive Representation Distillation, Yonglong Tian, ICLR-2020 [pytorch*]
•COBRA: Contrastive Bi-Modal Representation Algorithm, Vishaal Udandarao, 2020
•What makes for good views for contrastive learning, Yonglong Tian, 2020
•Prototypical Contrastive Learning of Unsupervised Representations, Junnan Li, 2020
•Contrastive Multi-View Representation Learning on Graphs, Kaveh Hassani, 2020
•DeCLUTR: Deep Contrastive Learning for Unsupervised Textual Representations, John M. Giorgi, 2020
•On Mutual Information in Contrastive Learning for Visual Representations, Mike Wu, 2020
•Semi-Supervised Contrastive Learning with Generalized Contrastive Loss and Its Application to Speaker Recognition, Nakamasa Inoue, 2020
2019
•Momentum Contrast for Unsupervised Visual Representation Learning, Kaiming He, 2019, [pytorch]
•Data-Efficient Image Recognition with Contrastive Predictive Coding, Olivier J. Hénaff, 2019
•Contrastive Multiview Coding, Yonglong Tian, 2019, [pytorch*]
•Learning deep representations by mutual information estimation and maximization, R Devon Hjelm, ICLR-2019, [pytorch]
•Contrastive Adaptation Network for Unsupervised Domain Adaptation, Guoliang Kang, CVPR-2019
2018
•Representation learning with contrastive predictive coding, Aaron van den Oord, 2018, [pytorch]
•Unsupervised Feature Learning via Non-Parametric Instance-level Discrimination, Zhirong Wu, CVPR-2018, [pytorch*]
•Adversarial Contrastive Estimation, Avishek Joey Bose, ACL-2018,
2017
•Time-Contrastive Networks: Self-Supervised Learning from Video, Pierre Sermanet, CVPR-2017
•Contrastive Learning for Image Captioning, Bo Dai, NeurIPS-2017, [lua*]
Before 2017
•Noise-contrastive estimation for answer selection with deep neural networks, Jinfeng Rao, 2016, [torch]
•Improved Deep Metric Learning with Multi-class N-pair Loss Objective, Kihyuk Sohn, NeurIPS-2016, [pytorch]
•Learning word embeddings efficiently with noise-contrastive estimation, Andriy Mnih, NeurIPS-2013,
•Noise-contrastive estimation: A new estimation principle for unnormalized statistical models, Michael Gutmann, AISTATS 2010, [pytorch]
•Dimensionality Reduction by Learning an Invariant Mapping, Raia Hadsell, 2006
服务器托管,北京服务器托管,服务器租用 http://www.fwqtg.net
机房租用,北京机房租用,IDC机房托管, http://www.fwqtg.net
前言 JRebel插件2022.4.2及之后版本在线地址激活方式已不可用,所以采用本地地址 + 生成的GUID方式 激活 (本文章写的时候,用的JRebel最新版本2023.2.1) 如果需要在线激活方式,可以参考 https://www.cnblogs.co…