Difference between revisions of "Semantic Role Labeling"

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[A0 He ] [AM-MOD would ] [AM-NEG n't ] [V accept ] [A1 anything of value ] from [A2 those he was writing about ] .
 
[A0 He ] [AM-MOD would ] [AM-NEG n't ] [V accept ] [A1 anything of value ] from [A2 those he was writing about ] .
  
== existing corpora ==
+
== Existing corpora ==
 
* [[FrameNet]]
 
* [[FrameNet]]
 
* PropBank
 
* PropBank

Revision as of 03:19, 1 November 2010

This is a technical problem related to one of the term projects in Information Extraction 10-707 in Fall 2010.

Semantic role labeling is a task of detecting the semantic arguments of a sentence. Typical semantic arguments are usually about roles related with the predicate or verb of a sentence such as agent, patient, and instrument. Recognizing and labeling semantic arguments is relatively domain-independent, and could be important in all NLP tasks such like Information extraction and Question Answering.

History

Semantic role labeling has been studied as shared tasks at CoNLL-2004 and CoNLL-2005.

Details

The following sentence, taken from the PropBank corpus, shows the semantic role labeling.

[A0 He ] [AM-MOD would ] [AM-NEG n't ] [V accept ] [A1 anything of value ] from [A2 those he was writing about ] .

Existing corpora

State of the art

  • rely on hand-developed grammars

- data-driven techniques

Related Paper

The Gildea and Jurafsky Computational Linguistics 2002 is a paper solving the semantic role labeling problem.

References/Links

  • Wikipedia article on Semantic Role Labeling - [1]
  • CCG - Illinois Semantic Role Labeling Demo - [2]
  • CoNLL-2004 and CoNLL-2005 Shared Tasks - [3]
  • FrameNet Website [4]
  • PropBank Website [5]