2020
DOI: 10.48550/arxiv.2009.03034
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Ordinal-Content VAE: Isolating Ordinal-Valued Content Factors in Deep Latent Variable Models

Abstract: In deep representational learning, it is often desired to isolate a particular factor (termed content) from other factors (referred to as style). What constitutes the content is typically specified by users through explicit labels in the data, while all unlabeled/unknown factors are regarded as style. Recently, it has been shown that such content-labeled data can be effectively exploited by modifying the deep latent factor models (e.g., VAE) such that the style and content are well separated in the latent repr… Show more

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