2018
DOI: 10.48550/arxiv.1806.00572
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Autoencoders Learn Generative Linear Models

Thanh V. Nguyen,
Raymond K. W. Wong,
Chinmay Hegde

Abstract: We provide a series of results for unsupervised learning with autoencoders. Specifically, we study shallow two-layer autoencoder architectures with shared weights. We focus on three generative models for data that are common in statistical machine learning: (i) the mixture-of-gaussians model, (ii) the sparse coding model, and (iii) the sparsity model with non-negative coefficients. For each of these models, we prove that under suitable choices of hyperparameters, architectures, and initialization, autoencoders… Show more

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