Automatic Identification of Conceptual Metaphors With Limited Knowledge

Authors

  • Lisa Gandy Central Michigan University
  • Nadji Allan Center for Advanced Defense Studies
  • Mark Atallah Center for Advanced Defense Studies
  • Ophir Frieder Georgetown University
  • Newton Howard Massachusetts Institute of Technology
  • Sergey Kanareykin Brain Sciences Foundation
  • Moshe Koppel Bar-Ilan University
  • Mark Last Ben Gurion University
  • Yair Neuman Ben Gurion University
  • Shlomo Argamon Illinois Institute of Technology

DOI:

https://doi.org/10.1609/aaai.v27i1.8648

Keywords:

linguistic metaphor, conceptual metaphor, corpus linguistics, analogy

Abstract

Full natural language understanding requires identifying and analyzing the meanings of metaphors, which are ubiquitous in both text and speech. Over the last thirty years, linguistic metaphors have been shown to be based on more general conceptual metaphors, partial semantic mappings between disparate conceptual domains. Though some achievements have been made in identifying linguistic metaphors over the last decade or so, little work has been done to date on automatically identifying conceptual metaphors. This paper describes research on identifying conceptual metaphors based on corpus data. Our method uses as little background knowledge as possible, to ease transfer to new languages and to mini- mize any bias introduced by the knowledge base construction process. The method relies on general heuristics for identifying linguistic metaphors and statistical clustering (guided by Wordnet) to form conceptual metaphor candidates. Human experiments show the system effectively finds meaningful conceptual metaphors.

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Published

2013-06-30

How to Cite

Gandy, L., Allan, N., Atallah, M., Frieder, O., Howard, N., Kanareykin, S., Koppel, M., Last, M., Neuman, Y., & Argamon, S. (2013). Automatic Identification of Conceptual Metaphors With Limited Knowledge. Proceedings of the AAAI Conference on Artificial Intelligence, 27(1), 328-334. https://doi.org/10.1609/aaai.v27i1.8648