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A hybrid approach for generating reputation based on opinions fusion and sentiment analysis

机译:一种基于意见融合与情感分析的杂交方法

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ABSTRACT Amazon, eBay, IMDb as well as several websites provide a convenient platform where users share their opinions on any entities without hindrance. Though those opinions are too many to be examined one by one, this is why a general reputation value will help people make a decision toward a target entity (purchase, download, rent …). This fact makes reputation generation task very challenging because an inaccurate reputation system will directly damage the credibility and popularity of the target entity. This paper aims to improve a recent work that handles the task of generating reputation based on fuzing and mining opinions expressed in natural languages and user feedback ratings. Therefore, we have proposed a hybrid approach that, (i) separates reviews into positive and negative based on their sentiment polarity by applying the two classifiers Naïve Bayes and Linear Support Vector Machine (LSVM), (ii) groups positive and negative reviews into principal opinion sets based on their semantic relations, (iii) calculates a custom reputation value separately for positive and negative groups by considering some statistics of principal opinion sets and finally (iv) computes the final reputation value using Weighted Arithmetic Mean. Experimental results show a significant improvement with respect to recent work.
机译:抽象亚马逊,eBay,IMDB以及几个网站提供了一个方便的平台,用户在没有障碍的情况下对任何实体分享他们的意见。虽然这些意见太多了逐一审查,但这就是为什么一般声誉价值有助于人们对目标实体作出决定(购买,下载,租金......)。这一事实使声誉代表任务非常具有挑战性,因为不准确的声誉系统将直接损害目标实体的可信度和普及。本文旨在改进最近的工作,这些作品处理基于以自然语言和用户反馈评级表达的福音和采矿意见的发行声誉的任务。因此,我们提出了一种混合方法,(i)通过应用两种分类机Naïve贝叶斯和线性支持向量机(LSVM),(ii)核心审查,将评定对积极和消极的评定,(i)将康复和消极分开对校长和负面审查基于他们的语义关系的意见集(iii)通过考虑主要意见集的一些统计数据,并使用加权算术平均值来单独计算正面和负面群体的定制声誉值。使用加权算术平均值计算最终声誉值。实验结果表明,关于最近的工作显着改善。

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