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Highly accurate SVM model with automatic feature selection for word sense disambiguation

机译:高度精确的SVM模型,具有自动功能选择,可消除单词歧义

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摘要

A novel algorithm for word sense disambiguation(WSD) that is based on SVM model improved with automatic feature selection is introduced. This learning method employs rich contextual features to predict the proper senses for specific words. Experimental results show that this algorithm can achieve an execellent performance on the set of data released during the SENSEEVAL-2 competition. We present the results obtained and discuss the transplantation of this algorithm to other languages such as Chinese. Experimental results on Chinese corpus show that our algorithm achieves an accuracy of 70.0% even with small training data.
机译:提出了一种基于SVM模型并经过自动特征选择的改进的词义消歧算法。这种学习方法利用丰富的上下文特征来预测特定单词的正确含义。实验结果表明,该算法可以在SENSEEVAL-2比赛期间发布的数据集上实现出色的性能。我们介绍了获得的结果,并讨论了将该算法移植到其他语言(例如中文)的方法。在中文语料库上的实验结果表明,即使训练数据很少,我们的算法也能达到70.0%的精度。

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