Bess or xbest:挖掘马来西亚在线评论

Norlela Samsudin, Mazidah Puteh, A. Hamdan
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引用次数: 12

摘要

信息和技术设施的进步,特别是互联网改变了我们沟通和表达对我们消费的服务或产品的意见或情感的方式。观点挖掘旨在将观点挖掘成积极或消极观点的过程自动化。这将有利于客户和卖家在确定最好的产品或服务。虽然有研究人员探索了识别情感两极分化的新技术,但很少有关于马来西亚评论者创建的意见挖掘的工作。同样的情况也发生在微文本上。因此,在本研究中,我们对从马来西亚人撰写的几个论坛和博客中收集的在线电影评论进行了意见挖掘的探索性研究。实验数据使用机器学习分类器进行测试,即Support VectorMachine, Naïve Baiyes和k-Nearest Neighbor。结果表明,在没有对微文本进行预处理或特征选择的情况下,这些机器学习技术的性能很低。因此,需要采取额外的步骤,以便从这些数据中挖掘意见。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bess or xbest: Mining the Malaysian online reviews
Advancement in information and technology facilities especially the Internet has changed the way we communicate and express opinions or sentiments on services or products that we consume. Opinion mining aims to automate the process of mining opinions into the positive or the negative views. It will benefit both the customers and the sellers in identifying the best product or service. Although there are researchers that explore new techniques of identifying the sentiment polarization, few works have been done on opinion mining created by the Malaysian reviewers. The same scenario happens to micro-text. Therefore in this study, we conduct an exploratory research on opinion mining of online movie reviews collected from several forums and blogs written by the Malaysian. The experiment data are tested using machine learning classifiers i.e. Support VectorMachine, Naïve Baiyes and k-Nearest Neighbor. The result illustrates that the performance of these machine learning techniques without any preprocessing of the micro-texts or feature selection is quite low. Therefore additional steps are required in order to mine the opinions from these data.
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