Learning from Label Proportions with Consistency Regularization

October 29, 2019 ยท Declared Dead ยท ๐Ÿ› Asian Conference on Machine Learning

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Authors Kuen-Han Tsai, Hsuan-Tien Lin arXiv ID 1910.13188 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 47 Venue Asian Conference on Machine Learning Last Checked 3 months ago
Abstract
The problem of learning from label proportions (LLP) involves training classifiers with weak labels on bags of instances, rather than strong labels on individual instances. The weak labels only contain the label proportion of each bag. The LLP problem is important for many practical applications that only allow label proportions to be collected because of data privacy or annotation cost, and has recently received lots of research attention. Most existing works focus on extending supervised learning models to solve the LLP problem, but the weak learning nature makes it hard to further improve LLP performance with a supervised angle. In this paper, we take a different angle from semi-supervised learning. In particular, we propose a novel model inspired by consistency regularization, a popular concept in semi-supervised learning that encourages the model to produce a decision boundary that better describes the data manifold. With the introduction of consistency regularization, we further extend our study to non-uniform bag-generation and validation-based parameter-selection procedures that better match practical needs. Experiments not only justify that LLP with consistency regularization achieves superior performance, but also demonstrate the practical usability of the proposed procedures.
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