Publication | Open Access
Neural Graphical Models over Strings for Principal Parts Morphological Paradigm Completion
17
Citations
31
References
2017
Year
Unknown Venue
Many of the world's languages contain an abundance of inflected forms for each lexeme. A major task in processing such languages is predicting these inflected forms. We develop a novel statistical model for the problem, drawing on graphical modeling techniques and recent advances in deep learning. We derive a Metropolis-Hastings algorithm to jointly decode the model. Our Bayesian network draws inspiration from principal parts morphological analysis. We demonstrate improvements on 5 languages.
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