InfoGAN: Interpretable Representation Learning by ...
that also maximizes the mutual information between a small subset of the latent variables and the observation. We derive a lower bound of the mutual information ... even though it is easy to construct perfect generative models with arbitrarily bad ... information learned from knowledge of random variable Y about the other random variable X . The
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arXiv:1301.3781v3 [cs.CL] 7 Sep 2013
arxiv.orgFor all the following models, the training complexity is proportional to O = E T Q; (1) where E is number of the training epochs, T is the number of …
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Deep Residual Learning for Image Recognition - …
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@google.com arXiv:1609.03499v2 [cs.SD] 19 Sep 2016
arxiv.orgwhere 1 <x t <1 and = 255. This non-linear quantization produces a significantly better reconstruction than a simple linear quantization scheme. …
A Tutorial on UAVs for Wireless Networks: …
arxiv.orgA Tutorial on UAVs for Wireless Networks: Applications, Challenges, and Open Problems Mohammad Mozaffari 1, ... to UAVs in wireless communications is the work in …
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Adversarial Generative Nets: Neural Network …
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Massive Exploration of Neural Machine Translation ...
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Mastering Chess and Shogi by Self-Play with a …
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Going deeper with convolutions - arXiv
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