Conference Proceedings
Predicting human similarity judgments with distributional models: The value of word associations
S De Deyne, A Perfors, DJ Navarro
Ijcai International Joint Conference on Artificial Intelligence | IJCAI-INT JOINT CONF ARTIF INTELL | Published : 2017
Abstract
To represent the meaning of a word, most models use external language resources, such as text corpora, to derive the distributional properties of word usage. In this study, we propose that internal language models, that are more closely aligned to the mental representations of words, can be used to derive new theoretical questions regarding the structure of the mental lexicon. A comparison with internal models also puts into perspective a number of assumptions underlying recently proposed distributional text-based models could provide important insights into cognitive science, including linguistics and artificial intelligence. We focus on wordembedding models which have been proposed to lear..
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Awarded by Australian Research Council
Funding Acknowledgements
This research was supported through ARC grants DE140101749 to SDD, DE120102378 to AP, and FT110100431 to DJN. This paper is an abridged version of [De Deyne et al., 2016b], presented at COLING-2016.