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CoT: Cooperative Training for Generative Modeling of Discrete Data

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arxiv 1804.03782 v3 pith:MK66URCI submitted 2018-04-11 cs.LG cs.AIcs.CLstat.ML

CoT: Cooperative Training for Generative Modeling of Discrete Data

classification cs.LG cs.AIcs.CLstat.ML
keywords traininggenerativedatadiscretemodelsproblemadversarialcooperative
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we study the generative models of sequential discrete data. To tackle the exposure bias problem inherent in maximum likelihood estimation (MLE), generative adversarial networks (GANs) are introduced to penalize the unrealistic generated samples. To exploit the supervision signal from the discriminator, most previous models leverage REINFORCE to address the non-differentiable problem of sequential discrete data. However, because of the unstable property of the training signal during the dynamic process of adversarial training, the effectiveness of REINFORCE, in this case, is hardly guaranteed. To deal with such a problem, we propose a novel approach called Cooperative Training (CoT) to improve the training of sequence generative models. CoT transforms the min-max game of GANs into a joint maximization framework and manages to explicitly estimate and optimize Jensen-Shannon divergence. Moreover, CoT works without the necessity of pre-training via MLE, which is crucial to the success of previous methods. In the experiments, compared to existing state-of-the-art methods, CoT shows superior or at least competitive performance on sample quality, diversity, as well as training stability.

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