Papers by Ludovica Pannitto

1 papers
Are Word Embeddings Really a Bad Fit for the Estimation of Thematic Fit? (2020.lrec-1)

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Challenge: In recent years, vectors derived from neural network training have replaced count-based distributional semantic models as a de facto standard for word representation in NLP.
Approach: They propose to evaluate count models and word embeddings on thematic fit estimation by taking into account a larger number of parameters and verb roles and introducing dependency-based embedders in the comparison.
Outcome: The proposed model outperforms count models and word embeddings in thematic fit estimation tasks while introducing dependency-based embedders.

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