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Wasserstein Variational Inference

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This paper introduces Wasserstein variational inference, a new form of approximate Bayesian inference based on optimal transport theory. Wasserstein variational inference uses a new family of divergences that includes both f-divergences and the Wasserstein distance as special cases. The gradients of the Wasserstein variational loss are obtained by backpropagating through the Sinkhorn iterations. This technique results in a very stable likelihood-free training method that can be used with implicit distributions and probabilistic programs. Using the Wasserstein variational inference framework, we introduce several new forms of autoencoders and test their robustness and performance against existing variational autoencoding techniques.

Luca Ambrogioni, Umut G\"u\c{c}l\"u, Ya\u{g}mur G\"u\c{c}l\"ut\"urk, Max Hinne, Eric Maris, Marcel A. J. van Gerven• 2018

Related benchmarks

TaskDatasetResultRank
Few-shot Image ClassificationtieredImageNet
Accuracy0.871
190
Few-shot classificationMiniImagenet--
98
Few-shot classificationFC-100
Accuracy68.5
36
Image ClassificationMEDIC subset
AA59.8
36
Few-shot Image ClassificationAIDER subset simulation
Average Accuracy (AA)66.1
36
Few-shot classificationCIFAR FS (test)
5-way 1-shot Acc77.9
26
Few-shot classificationCDD 5-way 1-shot
AA61.2
19
Few-shot classificationCDD 5-way 5-shot
Average Accuracy (AA)65.8
17
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