Improved Estimation of Entropy for Evaluation of Word Sense Induction
Author(s) -
Linlin Li,
Ivan Titov,
Caroline Sporleder
Publication year - 2014
Publication title -
computational linguistics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.314
H-Index - 98
eISSN - 1530-9312
pISSN - 0891-2017
DOI - 10.1162/coli_a_00196
Subject(s) - estimator , computer science , entropy (arrow of time) , ground truth , principle of maximum entropy , cluster analysis , sample size determination , word (group theory) , sample (material) , statistics , artificial intelligence , mathematics , physics , chromatography , quantum mechanics , geometry , chemistry
Information-theoretic measures are among the most standard techniques for evaluation of clustering methods including word sense induction (WSI) systems. Such measures rely on sample-based estimates of the entropy. However, the standard maximum likelihood estimates of the entropy are heavily biased with the bias dependent on, among other things, the number of clusters and the sample size. This makes the measures unreliable and unfair when the number of clusters produced by different systems vary and the sample size is not exceedingly large. This corresponds exactly to the setting of WSI evaluation where a ground-truth cluster sense number arguably does not exist and the standard evaluation scenarios use a small number of instances of each word to compute the score. We describe more accurate entropy estimators and analyze their performance both in simulations and on evaluation of WSI systems
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