Automatic Acquisition and Efficient Representation of Syntactic Structures

Solan, Zach, Ruppin, Eytan, Horn, David, Edelman, Shimon

Neural Information Processing Systems 

The distributional principle according to which morphemes that occur in identical contexts belong, in some sense, to the same category [1] has been advanced as a means for extracting syntactic structures from corpus data. We extend this principle by applying it recursively, and by using mutual information for estimating category coherence. The resulting model learns, in an unsupervised fashion, highly structured, distributed representations of syntactic knowledge from corpora. It also exhibits promising behavior in tasks usually thought to require representations anchored in a grammar, such as systematicity.

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