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Word sense disambiguation with pattern learning and automatic feature selection

机译:通过模式学习和自动特征选择消除词义歧义

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摘要

This paper presents a novel approach for word sense disambiguation. The underlying algorithm has two main components: (1) pattern learning from available sense-tagged corpora (SemCor), from dictionary definitions (WordNet) and from a generated corpus (GenCor); and (2) instance based learning with automatic feature selection, when training data is available for a particular word. The ideas described in this paper were implemented in a system that achieves excellent performance on the data provided during the SENSEVAL-2 evaluation exercise, for both English all words and English lexical sample tasks.
机译:本文提出了一种新颖的词义消歧方法。底层算法具有两个主要组成部分:(1)从可用的带有语义标签的语料库(SemCor),词典定义(WordNet)和生成的语料库(GenCor)中学习模式; (2)当训练数据可用于特定单词时,具有自动特征选择的基于实例的学习。本文描述的思想是在一个系统中实现的,该系统在SENSEVAL-2评估练习期间提供的数据上表现出色,可用于英语所有单词和英语词汇示例任务。

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