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SVR-based outlier detection and its application to hotel ranking

机译:基于SVR的离群值检测及其在酒店排名中的应用

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摘要

With the rapid advance in information technology, more and more information exchange platforms appear. People can freely exchange information on these platforms. However, not all information is reliable. To make correct decisions, it is necessary to detect and remove unreliable information. The main purpose of this study is to improve the reliability of hotel ranking by detecting and deleting outlier on-line reviews. For this purpose, we design a support vector regression (SVR) based outlier detector using existing on-line reviews. Intuitively, normal reviews are regular, and can be correctly labeled by the SVR detector. Outlier reviews, on the other hand, are usually not regular, and cannot be correctly labeled. Thus, a well-designed SVR-detector can help us to delete outlier reviews automatically. Results obtained in this study are useful not only for hotel ranking. In principle it can be good for recommendation of any services.
机译:随着信息技术的飞速发展,越来越多的信息交流平台出现。人们可以在这些平台上自由交换信息。但是,并非所有信息都是可靠的。为了做出正确的决定,有必要检测并删除不可靠的信息。这项研究的主要目的是通过检测和删除异常在线评论来提高酒店排名的可靠性。为此,我们使用现有的在线评论设计基于支持向量回归(SVR)的异常值检测器。直观上,正常的检查是定期的,并且可以由SVR检测器正确标记。另一方面,异常评论通常是不定期的,无法正确标记。因此,精心设计的SVR检测器可以帮助我们自动删除异常评论。这项研究获得的结果不仅对酒店排名有用。原则上,它可以推荐任何服务。

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