通过用户社交网络资料和见解做出有价值决策的新模式

A. Tamam, Hatem M. Abdelkader, Asmaa Haroun
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引用次数: 0

摘要

最近,许多不同权力/兴趣的用户在阿拉伯语Twitter等社交网站上交换新闻,并分享他们对时事的看法。如果不根据用户对某一领域的接近程度/兴趣来区分用户,这些意见/评论就不能用于做出正确的决策或提高某一特定领域的产出。本文的主要目标是提出一个通用的自动模型来分析用户意见,从而根据用户对该领域的接近/兴趣程度在特定领域做出有价值的决策。该模型结合了粗糙集理论、门德罗的权力-利益模型和数据挖掘决策技术。基于门德罗权力-利益模型的粗糙集理论支持通过账户特征对用户进行识别和分类。然后使用无监督k-means将他们的回答/意见聚类为积极,消极或中立。用户分类和阿拉伯语答复/意见聚类阶段产生的结果支持在某一特定领域作出有价值/重要的决定。通过实例分析,验证了该模型的有效性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new model for making valuable decisions through user social network profiles and insights
Recently so many users who are different in power/interest trade news on social networking sites like Arabic Twitter and share their views on current affairs. These opinions/comments can’t be used to make good decisions or boost output in a particular area without differentiating users according to their closeness/interest to this area. This paper’s major goal is to present a generalized automatic model to analyze user opinions to make valuable decisions in a particular area based on the degree of user closeness/interest to this area. The proposed model combines Rough set theory, Mendelow’s power-interest model, and data mining decision-making techniques. Rough set theory based on Mendelow’s power-interest model supports the identification and classification of users by their account features. Unsupervised k-means would then be used to cluster their replies/opinions into positive, negative, or neutral. The result generated from the classification of users and the clustering phase of Arabic replies/opinions supports the making of valuable/important decisions in a particular area. A case study is carried out to demonstrate the effectiveness and accuracy of the proposed model.
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