Difference between revisions of "Models of metaphor in NLP"

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This is a review paper of modeling metaphors in NLP. The author devised it into two main tasks: "metaphor recognition" and "metaphor interpretation".
 
This is a review paper of modeling metaphors in NLP. The author devised it into two main tasks: "metaphor recognition" and "metaphor interpretation".
  
=== Metaphor Recognition ===
+
== Metaphor Recognition ==
  
==== Met* System (Fass, 1991) ====
+
=== Met* System (Fass, 1991) ===
  
  
==== Goatly (1997) ====
+
=== Goatly (1997) ===
  
==== Peters & Peters (2000) ====
+
=== Peters & Peters (2000) ===
  
  
==== CorMet System (Mason, 2004) ====
+
=== CorMet System (Mason, 2004) ===
  
==== TroFi System(Birke & Sarkar, 2006) ====
+
=== TroFi System(Birke & Sarkar, 2006) ===
  
==== Gedigan et al. (2006) ====
+
=== Gedigan et al. (2006) ===
  
==== Krishnakumaran & Zhu (2007) ====
+
=== Krishnakumaran & Zhu (2007) ===
  
=== Metaphor Interpretation ===
+
== Metaphor Interpretation ==
  
 
== Related papers ==
 
== Related papers ==

Revision as of 15:15, 7 October 2012

Citation

E. Shutova. 2010. Models of Metaphor in NLP. In Proceedings of ACL 2010, Uppsala, Sweden.

Online version

ACL anthology

Introduction

This is a review paper of modeling metaphors in NLP. The author devised it into two main tasks: "metaphor recognition" and "metaphor interpretation".

Metaphor Recognition

Met* System (Fass, 1991)

Goatly (1997)

Peters & Peters (2000)

CorMet System (Mason, 2004)

TroFi System(Birke & Sarkar, 2006)

Gedigan et al. (2006)

Krishnakumaran & Zhu (2007)

Metaphor Interpretation

Related papers

The widely cited Pang et al EMNLP 2002 paper was influenced by this paper - but considers supervised learning techniques. The choice of movie reviews as the domain was suggested by the (relatively) poor performance of Turney's method on movies.

An interesting follow-up paper is Turney and Littman, TOIS 2003 which focuses on evaluation of the technique of using PMI for predicting the semantic orientation of words.