Learning from label proportions with generative adversarial networks

J Liu, B Wang, Z Qi, Y Tian… - Advances in neural …, 2019 - proceedings.neurips.cc
Advances in neural information processing systems, 2019proceedings.neurips.cc
In this paper, we leverage generative adversarial networks (GANs) to derive an effective
algorithm LLP-GAN for learning from label proportions (LLP), where only the bag-level
proportional information in labels is available. Endowed with end-to-end structure, LLP-GAN
performs approximation in the light of an adversarial learning mechanism, without imposing
restricted assumptions on distribution. Accordingly, we can directly induce the final instance-
level classifier upon the discriminator. Under mild assumptions, we give the explicit …
Abstract
In this paper, we leverage generative adversarial networks (GANs) to derive an effective algorithm LLP-GAN for learning from label proportions (LLP), where only the bag-level proportional information in labels is available. Endowed with end-to-end structure, LLP-GAN performs approximation in the light of an adversarial learning mechanism, without imposing restricted assumptions on distribution. Accordingly, we can directly induce the final instance-level classifier upon the discriminator. Under mild assumptions, we give the explicit generative representation and prove the global optimality for LLP-GAN. Additionally, compared with existing methods, our work empowers LLP solver with capable scalability inheriting from deep models. Several experiments on benchmark datasets demonstrate vivid advantages of the proposed approach.
proceedings.neurips.cc
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