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Contribution to Book
Simple Learning and Compositional Application of Perceptually Grounded Word Meanings for Incremental Reference Resolution
Proceedings of the 53rd Annual Meeting of the Association for Computational Linguistics and the 7th International Joint Conference on Natural Language Processing (2015)
  • Casey Kennington, Bielefeld University
  • David Schlangen, Bielefeld University
Abstract
An elementary way of using language is to refer to objects. Often, these objects are physically present in the shared environment and reference is done via mention of perceivable properties of the objects. This is a type of language use that is modelled well neither by logical semantics nor by distributional semantics, the former focusing on inferential relations between expressed propositions, the latter on similarity relations between words or phrases. We present an account of word and phrase meaning that is perceptually grounded, trainable, compositional, and ‘dialogueplausible’ in that it computes meanings word-by-word. We show that the approach performs well (with an accuracy of 65% on a 1-out-of-32 reference resolution task) on direct descriptions and target/landmark descriptions, even when trained with less than 800 training examples and automatically transcribed utterances.
Disciplines
Publication Date
2015
Editor
Chengqing Zong and Michael Strube
Publisher
Association for Computational Linguistics
ISBN
9781941643723
Citation Information
Casey Kennington and David Schlangen. "Simple Learning and Compositional Application of Perceptually Grounded Word Meanings for Incremental Reference Resolution" Red Hook, NYProceedings of the 53rd Annual Meeting of the Association for Computational Linguistics and the 7th International Joint Conference on Natural Language Processing Vol. 1 (2015) p. 292 - 301
Available at: http://works.bepress.com/casey-kennington/3/