Learning grammar with a divide-and-concur neural network.

Sean Deyo, Veit Elser
Author Information
  1. Sean Deyo: Physics Department, Cornell University, Ithaca, New York 14853, USA.
  2. Veit Elser: Physics Department, Cornell University, Ithaca, New York 14853, USA.

Abstract

We implement a divide-and-concur iterative projection approach to context-free grammar inference. Unlike most state-of-the-art models of natural language processing, our method requires a relatively small number of discrete parameters, making the inferred grammar directly interpretable-one can read off from a solution how to construct grammatically valid sentences. Another advantage of our approach is the ability to infer meaningful grammatical rules from just a few sentences, compared to the hundreds of gigabytes of training data many other models employ. We demonstrate several ways of applying our approach: classifying words and inferring a grammar from scratch, taking an existing grammar and refining its categories and rules, and taking an existing grammar and expanding its lexicon as it encounters new words in new data.

Word Cloud

Created with Highcharts 10.0.0grammardivide-and-concurapproachmodelssentencesrulesdatawordstakingexistingnewimplementiterativeprojectioncontext-freeinferenceUnlikestate-of-the-artnaturallanguageprocessingmethodrequiresrelativelysmallnumberdiscreteparametersmakinginferreddirectlyinterpretable-onecanreadsolutionconstructgrammaticallyvalidAnotheradvantageabilityinfermeaningfulgrammaticaljustcomparedhundredsgigabytestrainingmanyemploydemonstrateseveralwaysapplyingapproach:classifyinginferringscratchrefiningcategoriesexpandinglexiconencountersLearningneuralnetwork

Similar Articles

Cited By