基于树形分类的osn中用户可信度分类

Rouzbeh Nabipourshiri, Bilal Abu-Salih, P. Wongthongtham
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引用次数: 11

摘要

在信息革命和社会大数据传播的背景下,误导信息的传播当然难以控制。这是由于在宣传和有倾向性的谣言下,信息通过未经证实的来源迅速而密集地流动。这导致了个人和团体之间,甚至政府和公民之间的混乱和信任的丧失。这需要通过开发旨在衡量这些虚拟平台用户可信度的理论和实践方法来加强努力,以阻止虚假信息的渗透。提出了一种基于域的在线社交网络用户可信度预测方法。通过结合三种机器学习算法,实验结果验证了该方法对基于域的osn可信用户进行分类和预测的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tree-based Classification to Users' Trustworthiness in OSNs
In the light of the information revolution, and the propagation of big social data, the dissemination of misleading information is certainly difficult to control. This is due to the rapid and intensive flow of information through unconfirmed sources under the propaganda and tendentious rumors. This causes confusion, loss of trust between individuals and groups and even between governments and their citizens. This necessitates a consolidation of efforts to stop penetrating of false information through developing theoretical and practical methodologies aim to measure the credibility of users of these virtual platforms. This paper presents an approach to domain-based prediction to user's trustworthiness of Online Social Networks (OSNs). Through incorporating three machine learning algorithms, the experimental results verify the applicability of the proposed approach to classify and predict domain-based trustworthy users of OSNs.
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