首页> 外文会议>2002 Conference on Empirical Methods in Natural Language Processing; Jul 6-7, 2002; Philadelphia, PA, USA >An Empirical Evaluation of Knowledge Sources and Learning Algorithms for Word Sense Disambiguation
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An Empirical Evaluation of Knowledge Sources and Learning Algorithms for Word Sense Disambiguation

机译:词义消歧的知识来源和学习算法的实证评估

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In this paper, we evaluate a variety of knowledge sources and supervised learning algorithms for word sense disambiguation on SENSEVAL-2 and SENSEVAL-1 data. Our knowledge sources include the part-of-speech of neighboring words, single words in the surrounding context, local collocations, and syntactic relations. The learning algorithms evaluated include Support Vector Machines (SVM), Naive Bayes, Ad-aBoost, and decision tree algorithms. We present empirical results showing the relative contribution of the component knowledge sources and the different learning algorithms. In particular, using all of these knowledge sources and SVM (i.e., a single learning algorithm) achieves accuracy higher than the best official scores on both SENSEVAL-2 and SENSEVAL-1 test data.
机译:在本文中,我们针对SENSEVAL-2和SENSEVAL-1数据上的词义消歧评估了各种知识来源和有监督的学习算法。我们的知识来源包括邻近单词的词性,周围环境中的单个单词,局部搭配以及句法关系。评估的学习算法包括支持向量机(SVM),朴素贝叶斯,Ad-aBoost和决策树算法。我们提供的经验结果显示了组成知识来源和不同学习算法的相对贡献。特别是,使用所有这些知识源和SVM(即单一学习算法)可获得的精度要高于SENSEVAL-2和SENSEVAL-1测试数据的最佳官方成绩。

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