Conditional Random Field Autoencoders for Unsupervised Structured Prediction
Ammar, Waleed, Dyer, Chris, Smith, Noah A.
–Neural Information Processing Systems
We introduce a framework for unsupervised learning of structured predictors with overlapping, global features. Each input's latent representation is predicted conditional on the observed data using a feature-rich conditional random field (CRF). Then a reconstruction of the input is (re)generated, conditional on the latent structure, using a generative model which factorizes similarly to the CRF. The autoencoder formulation enables efficient exact inference without resorting to unrealistic independence assumptions or restricting the kinds of features that can be used. We illustrate insightful connections to traditional autoencoders, posterior regularization and multi-view learning.
Neural Information Processing Systems
Feb-14-2020, 12:13:45 GMT
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