Title
Using hidden Markov random fields to combine distributional and pattern-based word clustering
Abstract
Word clustering is a conventional and important NLP task, and the literature has suggested two kinds of approaches to this problem. One is based on the distributional similarity and the other relies on the co-occurrence of two words in lexicosyntactic patterns. Although the two methods have been discussed separately, it is promising to combine them since they are complementary with each other. This paper proposes to integrate them using hidden Markov random fields and demonstrates its effectiveness through experiments.
Year
Venue
Keywords
2008
COLING
word clustering,hidden markov random field,distributional similarity,pattern-based word clustering,lexicosyntactic pattern,important nlp task
Field
DocType
Volume
Markov process,Markov property,Pattern recognition,Markov model,Computer science,Markov chain,Variable-order Markov model,Artificial intelligence,Cluster analysis,Hidden Markov model,Machine learning,Hidden semi-Markov model
Conference
C08-1
Citations 
PageRank 
References 
1
0.38
30
Authors
2
Name
Order
Citations
PageRank
Nobuhiro Kaji125721.71
Masaru Kitsuregawa23188831.46