2 research outputs found

    An Exploration of Semantic Features in an Unsupervised Thematic Fit Evaluation Framework

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    Thematic fit is the extent to which an entity fits a thematic role in the semantic frame of an event, e.g., how well humans would rate ā€œknifeā€ as an instrument of an event of cutting. We explore the use of the SENNA semantic role-labeller in defining a distributional space in order to build an unsupervised model of event-entity thematic fit judgements. We test a number of ways of extracting features from SENNA-labelled versions of the ukWaC and BNC corpora and identify tradeoffs. Some of our Distributional Memory models outperform an existing syntax-based model (TypeDM) that uses hand-crafted rules for role inference on a previously tested data set. We combine the results of a selected SENNA-based model with TypeDMā€™s results and find that there is some amount of complementarity in what a syntactic and a semantic model will cover. In the process, we create a broad-coverage semantically-labelled corpus
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