2022
DOI: 10.48550/arxiv.2201.02547
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AugmentedPCA: A Python Package of Supervised and Adversarial Linear Factor Models

Abstract: Deep autoencoders are often extended with a supervised or adversarial loss to learn latent representations with desirable properties, such as greater predictivity of labels and outcomes or fairness with respects to a sensitive variable. Despite the ubiquity of supervised and adversarial deep latent factor models, these methods should demonstrate improvement over simpler linear approaches to be preferred in practice. This necessitates a reproducible linear analog that still adheres to an augmenting supervised o… Show more

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