Litcius/Paper detail

Semi-supervised Learning with Multi-Head Co-Training

Mingcai Chen, Yuntao Du, Yi Zhang, Shuwei Qian, Chongjun Wang

2022Proceedings of the AAAI Conference on Artificial Intelligence22 citationsDOIOpen Access PDF

Abstract

Co-training, extended from self-training, is one of the frameworks for semi-supervised learning. Without natural split of features, single-view co-training works at the cost of training extra classifiers, where the algorithm should be delicately designed to prevent individual classifiers from collapsing into each other. To remove these obstacles which deter the adoption of single-view co-training, we present a simple and efficient algorithm Multi-Head Co-Training. By integrating base learners into a multi-head structure, the model is in a minimal amount of extra parameters. Every classification head in the unified model interacts with its peers through a “Weak and Strong Augmentation” strategy, in which the diversity is naturally brought by the strong data augmentation. Therefore, the proposed method facilitates single-view co-training by 1). promoting diversity implicitly and 2). only requiring a small extra computational overhead. The effectiveness of Multi-Head Co-Training is demonstrated in an empirical study on standard semi-supervised learning benchmarks.

Topics & Concepts

Co-trainingComputer scienceOverhead (engineering)Head (geology)Training (meteorology)Machine learningArtificial intelligenceBase (topology)Training setSupervised learningDiversity (politics)Simple (philosophy)Semi-supervised learningArtificial neural networkMathematicsGeomorphologyGeologyPhilosophyMeteorologyOperating systemPhysicsMathematical analysisEpistemologyAnthropologySociologyDomain Adaptation and Few-Shot LearningMachine Learning and ELMMachine Learning and Data Classification