Journal article
Predicting lexical norms: A comparison between a word association model and text-based word co-occurrence models
H Vankrunkelsven, S Verheyen, G Storms, S De Deyne
Journal of Cognition | Ubiquity Press, Ltd. | Published : 2018
DOI: 10.5334/joc.50
Abstract
In two studies we compare a distributional semantic model derived from word co-occurrences and a word association based model in their ability to predict properties that affect lexical processing. We focus on age of acquisition, concreteness, and three affective variables, namely valence, arousal, and dominance, since all these variables have been shown to be fundamental in word meaning. In both studies we use a model based on data obtained in a continued free word association task to predict these variables. In Study 1 we directly compare this model to a word co-occurrence model based on syntactic dependency relations to see which model is better at predicting the variables under scrutiny i..
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Awarded by European Commission