Depth-Bounded Statistical PCFG Induction as a Model of Human Grammar Acquisition

Author:

Jin Lifeng1,Schwartz Lane2,Doshi-Velez Finale3,Miller Timothy4,Schuler William5

Affiliation:

1. The Ohio State University, Department of Linguistics. jin.544@osu.edu

2. University of Illinois at Urbana-Champaign, Department of Linguistics. lanes@illinois.edu

3. Harvard University, Department of Computer Science. finale@seas.harvard.edu

4. Boston Children’s Hospital & Harvard Medical School, Computational Health Informatics Program. timothy.miller@childrens.harvard.edu

5. The Ohio State University, Department of Linguistics. schuler@ling.osu.edu

Abstract

Abstract This article describes a simple PCFG induction model with a fixed category domain that predicts a large majority of attested constituent boundaries, and predicts labels consistent with nearly half of attested constituent labels on a standard evaluation data set of child-directed speech. The article then explores the idea that the difference between simple grammars exhibited by child learners and fully recursive grammars exhibited by adult learners may be an effect of increasing working memory capacity, where the shallow grammars are constrained images of the recursive grammars. An implementation of these memory bounds as limits on center embedding in a depth-specific transform of a recursive grammar yields a significant improvement over an equivalent but unbounded baseline, suggesting that this arrangement may indeed confer a learning advantage.

Publisher

MIT Press - Journals

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Language and Linguistics

Reference72 articles.

1. Memory Requirements and local ambiguities of parsing strategies;Abney;Journal of Psycholinguistic Research,1991

2. Modeling children’s early grammatical knowledge;Bannard;Proceedings of the National Academy of Sciences of the United States of America,2009

3. The input-output relationship in first language acquisition;Behrens;Language and Cognitive Processes,2006

4. Painless unsupervised learning with features;Berg-Kirkpatrick,2010

5. Labeled grammar induction with minimal supervision;Bisk,2015

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