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Is Structure Necessary for Modeling Argument Expectations in Distributional Semantics? (1710.00998v1)

Published 3 Oct 2017 in cs.CL

Abstract: Despite the number of NLP studies dedicated to thematic fit estimation, little attention has been paid to the related task of composing and updating verb argument expectations. The few exceptions have mostly modeled this phenomenon with structured distributional models, implicitly assuming a similarly structured representation of events. Recent experimental evidence, however, suggests that human processing system could also exploit an unstructured "bag-of-arguments" type of event representation to predict upcoming input. In this paper, we re-implement a traditional structured model and adapt it to compare the different hypotheses concerning the degree of structure in our event knowledge, evaluating their relative performance in the task of the argument expectations update.

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Authors (4)
  1. Emmanuele Chersoni (25 papers)
  2. Enrico Santus (28 papers)
  3. Philippe Blache (7 papers)
  4. Alessandro Lenci (26 papers)
Citations (8)