基于图的感应系统无监督参数调优的图连通性度量。

Ioannis Korkontzelos, Ioannis P. Klapaftis, S. Manandhar
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引用次数: 12

摘要

词义归纳(WSI)是识别给定文本中目标单词的不同含义(用法)的任务。本文重点研究了基于图的WSI方法的自由参数的无监督估计,并探讨了使用8个图连通性度量(GCM)来评估图的连通性程度。给定一个目标词和一组参数,GCM评估生成的集群的连通性,这些集群对应于初始(未聚类)图的子图。每个参数设置根据其中一个GCM分配一个分数,然后选择最高的得分设置。我们对SemEval-2007 WSI任务(SWSI)的名词进行了评价,结果表明:(1)所有GCM估计的一组参数在两种SWSI评估方案中都明显优于表现最差的参数设置,(2)所有GCM估计的一组参数在监督评估方案中比最频繁感(MFS)基线的表现在统计上显著,(3)两个度量估计的一组参数与监督方式估计的一组参数表现接近。
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Graph Connectivity Measures for Unsupervised Parameter Tuning of Graph-Based Sense Induction Systems.
Word Sense Induction (WSI) is the task of identifying the different senses (uses) of a target word in a given text. This paper focuses on the unsupervised estimation of the free parameters of a graph-based WSI method, and explores the use of eight Graph Connectivity Measures (GCM) that assess the degree of connectivity in a graph. Given a target word and a set of parameters, GCM evaluate the connectivity of the produced clusters, which correspond to subgraphs of the initial (unclustered) graph. Each parameter setting is assigned a score according to one of the GCM and the highest scoring setting is then selected. Our evaluation on the nouns of SemEval-2007 WSI task (SWSI) shows that: (1) all GCM estimate a set of parameters which significantly outperform the worst performing parameter setting in both SWSI evaluation schemes, (2) all GCM estimate a set of parameters which outperform the Most Frequent Sense (MFS) baseline by a statistically significant amount in the supervised evaluation scheme, and (3) two of the measures estimate a set of parameters that performs closely to a set of parameters estimated in supervised manner.
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Graph Connectivity Measures for Unsupervised Parameter Tuning of Graph-Based Sense Induction Systems.
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