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Extraction of Definitional Contexts through Machine Learning

机译:通过机器学习提取定义上下文

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Automatic extraction of definitional contexts has been a problem that deserved to be addressed to in different studies by applications demands in the Natural Language Processing. The first approach to the automatic extraction of these resources has been through specific linguistic patterns, but this approach requires previous extensive linguistic knowledge and a thorough previous work. A model machine learning, on the other hand, reduces the work and, as we believe, can improve the results obtained with only one approach based on linguistic rules. Here experiments for extraction/classification of definitional contexts with naive bayes classifier and SVM are presented. We show that through machine learning approaches we can improve the results of this specific task. The highest result was obtained by the naive bayes classifier with back-off as smoothing.
机译:自动提取定义上下文已成为一个问题,应通过自然语言处理中的应用需求在不同的研究中解决。自动提取这些资源的第一种方法是通过特定的语言模式,但是这种方法需要先前的广泛语言知识和全面的工作。另一方面,模型机器学习可以减少工作量,并且,正如我们认为的那样,只能改善基于语言规则的一种方法所获得的结果。这里介绍了使用朴素贝叶斯分类器和SVM进行定义上下文的提取/分类的实验。我们表明,通过机器学习方法,我们可以改善此特定任务的结果。朴素贝叶斯分类器以退避作为平滑处理获得了最高结果。

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