Metaphor Interpretation Using Word Embeddings

Authors

  • Kfir Bar The College of Management
  • Nachum Dershowitz Tel Aviv University
  • Lena Dankin Tel Aviv University

DOI:

https://doi.org/10.13053/cys-26-3-4351

Keywords:

Metaphor interpretation, word embeddings

Abstract

We suggest a model for metaphor interpretation using word embeddings trained over a relatively large corpus. Our system handles nominal metaphors, like time is money. It generates a ranked list of potential interpretations of given metaphors. Candidate meanings are drawn from collocations of the topic (time) and vehicle (money) components, automatically extracted from a dependency-parsed corpus. We explore adding candidates derived from word association norms (common human responses to cues). Our ranking procedure considers similarity between candidate interpretations and metaphor components, measured in a semantic vector space. Lastly, a clustering algorithm removes semantically related duplicates, thereby allowing other candidate interpretations to attain higher rank. We evaluate using different sets of annotated metaphors, with encouraging preliminary results.

Author Biographies

Kfir Bar, The College of Management

School of Computer Science

Nachum Dershowitz, Tel Aviv University

School of Computer Science

Lena Dankin, Tel Aviv University

School of Computer Science

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Published

2022-08-31

Issue

Section

Articles