2024
DOI: 10.1007/s11263-024-02028-4
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Domain Generalization with Small Data

Kecheng Chen,
Elena Gal,
Hong Yan
et al.

Abstract: In this work, we propose to tackle the problem of domain generalization in the context of insufficient samples. Instead of extracting latent feature embeddings based on deterministic models, we propose to learn a domain-invariant representation based on the probabilistic framework by mapping each data point into probabilistic embeddings. Specifically, we first extend empirical maximum mean discrepancy (MMD) to a novel probabilistic MMD that can measure the discrepancy between mixture distributions (i.e., sourc… Show more

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