Publication | Open Access
GANS for Sequences of Discrete Elements with the Gumbel-softmax Distribution
207
Citations
8
References
2016
Year
Continuous ApproximationEngineeringMachine LearningGenerative Adversarial NetworkDiscrete ElementsGenerative ModelsGenerative ModelGenerative Adversarial NetworksComputer ScienceDiscrete MathematicsGenerative AiDeep LearningGenerative SystemSynthetic Image Generation
Generative Adversarial Networks (GAN) have limitations when the goal is to generate sequences of discrete elements. The reason for this is that samples from a distribution on discrete objects such as the multinomial are not differentiable with respect to the distribution parameters. This problem can be avoided by using the Gumbel-softmax distribution, which is a continuous approximation to a multinomial distribution parameterized in terms of the softmax function. In this work, we evaluate the performance of GANs based on recurrent neural networks with Gumbel-softmax output distributions in the task of generating sequences of discrete elements.
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