Arabic Opinion Mining Using Parallel Decision Trees

W. Ahmed, A. El-Halees
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引用次数: 2

Abstract

Opinion mining is an interested area of research, which epitomize the customer reviews of a product or service and express whether the opinions are positive or negative. Various methods have been proposed as classifiers for opinion mining such as Naïve Bayesian, and Support vector machine, these methods classify opinion without giving us the reasons about why the instance opinion is classified to certain class. Therefore, in our work, we investigate opinion mining of Arabic text at the document level, by applying decision trees classification classifier to have clear, understandable rule, also we apply parallel decision trees classifiers to have efficient results. We applied parallel decision trees on two Arabic corpus of text documents by using parallel implementation of RapidMiner tools. In case of applying parallel decision tree family on OCA we get the best results of accuracy (93.83%), f-measure (93.22) and consumed time 42 Sec at thread 4, one of the resulted rule is Urdu language lines. In case of applying parallel decision tree family on BHA we get the best results of accuracy (90.63%), f-measure (82.29) and consumed time 219 Sec at thread 4, one of the resulted rule is Urdu language lines.
基于并行决策树的阿拉伯语意见挖掘
意见挖掘是一个令人感兴趣的研究领域,它集中反映顾客对产品或服务的评论,并表达意见是积极的还是消极的。已经提出了各种方法作为意见挖掘的分类器,如Naïve贝叶斯和支持向量机,这些方法对意见进行分类,而不给我们为什么实例意见被分类到某一类的原因。因此,在本文的工作中,我们在文档级研究阿拉伯语文本的意见挖掘,通过使用决策树分类器来获得清晰易懂的规则,并使用并行决策树分类器来获得高效的结果。通过使用RapidMiner工具的并行实现,我们在两个阿拉伯语文本文档语料库上应用了并行决策树。在OCA上应用并行决策树家族,获得了准确率(93.83%)、f-measure(93.22)和线程4消耗时间42秒的最佳结果,其中一条规则是乌尔都语行。在BHA上应用并行决策树族,获得了准确率(90.63%)、f-measure(82.29)和线程4耗时219秒的最佳结果,其中一条规则是乌尔都语行。
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