基于领域本体和聚类的网页分类

S. Soltani, A. Barforoush
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引用次数: 4

摘要

利用本体群体将现有网站转化为语义网站是分类法在其中起主要作用的研究领域。现有的分类算法及其单级执行在web数据上存在不足。此外,即使是普通领域的网站,由于上下文和结构的多样性,也缺乏训练数据。在本文中,我们有三个经验:1-利用领域本体中关于类层的信息来训练分类器(分层分类),分类准确率提高了10%。训练数据集问题及聚类预处理的经验。3-使用合奏从两种方法中获益。除了从这些经验中得到精度的提高外,我们发现使用集成可以省去分类的算法,使用Naïve Bayes这样简单的分类,并且具有SVM这样复杂算法的精度。
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Web pages Classification Using Domain Ontology and Clustering
Transferring the current Websites to Semantic Websites, using ontology population, is a research area within which classification has the main role. The existing classification algorithms and single level execution of them are insufficient on web data. Moreover, because of the variety in the context and structure of even common domain Websites, there is a lack of training data. In this paper we had three experiences: 1- using information in domain ontology about the layers of classes to train classifiers (layered classification) with improvement up to 10% on accuracy of classification. 2- experience on problem of training dataset and using clustering as a preprocess. 3- using ensembles to benefit from both two methods. Beside the improvement of accuracy from these experiences, we found out that with ensemble we can dispense with the algorithm of classification and use a simple classification like Naïve Bayes and have the accuracy of complex algorithms like SVM.
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