A tensor encoding model for semantic processing
Author(s) -
Michael Symonds,
Peter Bruza,
Laurianne Sitbon,
Ian Turner
Publication year - 2012
Publication title -
qut eprints (queensland university of technology)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/2396761.2398617
Subject(s) - computer science , natural language processing , encoding (memory) , semantic memory , tensor (intrinsic definition) , artificial intelligence , meaning (existential) , word (group theory) , semantics (computer science) , cognition , information processing , linguistics , cognitive psychology , psychology , mathematics , programming language , neuroscience , philosophy , pure mathematics , psychotherapist
This paper develops and evaluates an enhanced corpus based approach for semantic processing. Corpus based models that build representations of words directly from text do not require pre-existing linguistic knowledge, and have demonstrated psychologically relevant performance on a number of cognitive tasks. However, they have been criticised in the past for not incorporating sufficient structural information. Using ideas underpinning recent attempts to overcome this weakness, we develop an enhanced tensor encoding model to build representations of word meaning for semantic processing. Our enhanced model demonstrates superior performance when compared to a robust baseline model on a number of semantic processing tasks.
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