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== Introduction ==
== Introduction ==
Generative adversarial networks (GANs) are one of the most important generative models, where a couple of discriminator and generator  compete to each other to solve a minimax game. Based on the original GAN paper, when the training is finished and Nash Equilibrium is reached, the discriminator is nothing but a constant function that assigns a score of 0.5 everywhere. This means that in this setting discriminator is nothing more than a tool to train the generator. Furthermore, the generator in traditional GAN model the data density in an implicit manner while in some applications we need to have an explicit generative model of data. Recently, it has been shown that training an energy-based model (EBM) with a parameterized variational is also a similar minimax game similar to the one in GAN. Although they are similar, There is an advantage of this EBM view that is unlike the original GAN formulation, in this EBM model discriminator itself is an explicit density model of the data.
Generative adversarial networks (GANs) are one of the most important generative models, where a couple of discriminator and generator  compete to each other to solve a minimax game. Based on the original GAN paper, when the training is finished and Nash Equilibrium is reached, the discriminator is nothing but a constant function that assigns a score of 0.5 everywhere. This means that in this setting discriminator is nothing more than a tool to train the generator. Furthermore, the generator in traditional GAN model the data density in an implicit manner while in some applications we need to have an explicit generative model of data. Recently, it has been shown that training an energy-based model (EBM) with a parameterized variational is also a similar minimax game similar to the one in GAN. Although they are similar, There is an advantage of this EBM view that is unlike the original GAN formulation, in this EBM model discriminator itself is an explicit density model of the data.
Considering some remarks, Authors in this paper show that an energy-based model can be trained using similar minmax formulation in GANs.

Revision as of 17:03, 13 November 2020

Introduction

Generative adversarial networks (GANs) are one of the most important generative models, where a couple of discriminator and generator compete to each other to solve a minimax game. Based on the original GAN paper, when the training is finished and Nash Equilibrium is reached, the discriminator is nothing but a constant function that assigns a score of 0.5 everywhere. This means that in this setting discriminator is nothing more than a tool to train the generator. Furthermore, the generator in traditional GAN model the data density in an implicit manner while in some applications we need to have an explicit generative model of data. Recently, it has been shown that training an energy-based model (EBM) with a parameterized variational is also a similar minimax game similar to the one in GAN. Although they are similar, There is an advantage of this EBM view that is unlike the original GAN formulation, in this EBM model discriminator itself is an explicit density model of the data.

Considering some remarks, Authors in this paper show that an energy-based model can be trained using similar minmax formulation in GANs.