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Information-Geometric Set Embeddings (IGSE): From Sets to Probability Distributions
Published 27 Nov 2019 in cs.LG and stat.ML | (1911.12463v2)
Abstract: This letter introduces an abstract learning problem called the "set embedding": The objective is to map sets into probability distributions so as to lose less information. We relate set union and intersection operations with corresponding interpolations of probability distributions. We also demonstrate a preliminary solution with experimental results on toy set embedding examples.
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