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Generative Matching Networks #1

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kazeevn opened this issue Oct 30, 2019 · 1 comment
Open

Generative Matching Networks #1

kazeevn opened this issue Oct 30, 2019 · 1 comment
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tails Experiments for improving in the low-statistics regions

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@kazeevn
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kazeevn commented Oct 30, 2019

Despite recent advances, the remaining bottlenecks in deep generative models are necessity of extensive training and difficulties with generalization from small number of training examples. We develop a new generative model called Gen-erative Matching Network which is inspired by the recently proposed matching networks for one-shot learning in discriminative tasks. By conditioning on the additional input dataset, our model can instantly learn new concepts that were not available in the training data but conform to a similar generative process. The pro-posed framework does not explicitly restrict diversity of the conditioning data and also does not require an extensive inference procedure for training or adaptation. Our experiments on the Omniglot dataset demonstrate that Generative Matching Networks significantly improve predictive performance on the fly as more additional data is available and outperform existing state of the art conditional generative models.

https://arxiv.org/pdf/1612.02192.pdf

@kazeevn kazeevn added the tails Experiments for improving in the low-statistics regions label Oct 30, 2019
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kazeevn commented Nov 4, 2019

test

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