Unsupervised Learning of Syntactic Structure
author: Christopher Manning,
Computer Science Department, Stanford University
published: Oct. 31, 2007, recorded: June 2007, views: 5772
published: Oct. 31, 2007, recorded: June 2007, views: 5772
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Description
Probabilistic models of language. ''Everybody knows that language is variable'' - Sapir (1921).
Probabilistic models give precise descriptions of a variable, uncertain world. The choice for language isn’t a dichotomy between rules and neural networks. Probabilistic models can be used over rich linguistic representations. They support inference and learning. There’s not much evidence of a poverty of the stimulus preventing them being used.
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