Single Classifier Approach for Verb Sense Disambiguation based on Generalized Features

We present a supervised method for verb sense disambiguation based on VerbNet. Most previous supervised approaches to verb sense disambiguation create a classifier for each verb that reaches a frequency threshold. These methods, however, have a significant practical problem that they cannot be applied to rare or unseen verbs. In order to overcome this problem, we create a single classifier to be applied to rare or unseen verbs in a new text. This single classifier also exploits generalized semantic features of a verb and its modifiers in order to better deal with rare or unseen verbs. Our experimental results show that the proposed method achieves equivalent performance to per-verb classifiers, which cannot be applied to unseen verbs. Our classifier could be utilized to improve the classifications in lexical resources of verbs, such as VerbNet, in a semi-automatic manner and to possibly extend the coverage of these resources to new verbs.

[1]  Martha Palmer,et al.  Improving English verb sense disambiguation performance with linguistically motivated features and clear sense distinction boundaries , 2009, Lang. Resour. Evaluation.

[2]  Robert L. Mercer,et al.  Class-Based n-gram Models of Natural Language , 1992, CL.

[3]  Martha Palmer,et al.  Novel Semantic Features for Verb Sense Disambiguation , 2008, ACL.

[4]  Christopher D. Manning,et al.  Generating Typed Dependency Parses from Phrase Structure Parses , 2006, LREC.

[5]  Martha Palmer,et al.  Combining Lexical Resources: Mapping Between PropBank and VerbNet , 2006 .

[6]  Lei Shi,et al.  Putting Pieces Together: Combining FrameNet, VerbNet and WordNet for Robust Semantic Parsing , 2005, CICLing.

[7]  Roberto Basili,et al.  Verb Classification using Distributional Similarity in Syntactic and Semantic Structures , 2012, ACL.

[8]  D. Roth,et al.  Token-level Disambiguation of VerbNet classes , 2005 .

[9]  Barbara Di Eugenio,et al.  An effective Discourse Parser that uses Rich Linguistic Information , 2009, NAACL.

[10]  Suzanne Stevenson,et al.  Exploiting a Verb Lexicon in Automatic Semantic Role Labelling , 2005, HLT.

[11]  Daniel Gildea,et al.  The Proposition Bank: An Annotated Corpus of Semantic Roles , 2005, CL.

[12]  Martha Palmer,et al.  Verbnet: a broad-coverage, comprehensive verb lexicon , 2005 .

[13]  Jason Weston,et al.  Natural Language Processing (Almost) from Scratch , 2011, J. Mach. Learn. Res..

[14]  Yoshua Bengio,et al.  Word Representations: A Simple and General Method for Semi-Supervised Learning , 2010, ACL.

[15]  Ari Rappoport,et al.  A Supervised Algorithm for Verb Disambiguation into VerbNet Classes , 2008, COLING.

[16]  Geoffrey Zweig,et al.  Linguistic Regularities in Continuous Space Word Representations , 2013, NAACL.

[17]  John B. Lowe,et al.  The Berkeley FrameNet Project , 1998, ACL.

[18]  Barbara Di Eugenio,et al.  A Maximum Entropy Approach To Disambiguating VerbNet Classes , 2010 .

[19]  Martha Palmer,et al.  VerbNet Class Assignment as a WSD Task , 2011, IWCS.

[20]  Hiroshi Nakagawa,et al.  Exact Passive-Aggressive Algorithm for Multiclass Classification Using Support Class , 2010, SDM.

[21]  Martha Palmer,et al.  Investigations into the role of lexical semantics in word sense disambiguation , 2004 .

[22]  Masaru Kitsuregawa,et al.  Kernel Slicing: Scalable Online Training with Conjunctive Features , 2010, COLING.