基于软计算方法的在线社交网络信任推荐模型

N. Sirisala, Anitha Yarava, Y. P. Reddy, Veeresh Poola
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引用次数: 1

摘要

社交网络(OSN)是一个新兴的平台,人们可以通过它与朋友、亲戚和其他志同道合的人联系。另一方面,用户的个人信息可能会因为其他用户的偏见和恶意行为而被滥用。在社交网络中建立信任环境是当前研究的问题之一。一些研究论文提出了信任计算方法,但仍然缺乏处理有偏见的推荐和对目标用户失去信任准确性的方法。为了解决这些开放性问题,本文针对Twitter社交网络提出了“一种基于软计算方法(TRMSC)的在线社交网络信任推荐模型”。这里分别计算已知用户和未知用户的直接信任和间接信任。用户的直接信任是使用基于他与其他用户的社会活动(帖子、收到的转发、收到的提及、列出的计数和关注者计数)的聚类方法计算的。在间接信任计算中,使用Dempster Shafer理论(DST)方法抑制有偏见推荐的影响,使用信任传递矩阵最小化信任损失。对该方法的性能进行了理论和实验分析。时间和空间的复杂性是用渐近符号来测量的。在实验结果中,TRMSC在不同的网络规模和不同距离(2到4跳)的目标用户中进行了评估,在这些情况下,它可以比现有方法表现得更好。
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A novel trust recommendation model in online social networks using soft computing methods
Social network (OSN) is an emerging platform through which people can connect with their friends, relatives, and other like‐minded people. On the other hand, users' personal information might be misused because of other users' biased and malicious behavior. Establishing a trusted environment in social networks is one of the current research problems. Some of the research papers proposed to trust computational methods, but still, there is a lack of methods to handle biased recommendations and loss of trust accuracy towards the target user. In this article, to address these open issues, “a novel trust recommendation model in online social networks using soft computing methods (TRMSC)” is proposed for the Twitter social networks. Here direct and indirect trust is computed for known and unknown users, respectively. The direct trust of a user is computed using clustering methods based on his social activities (posts, retweets received, mentions received, listed count, and follower count) with other users. In the computation of indirect trust, the impact of biased recommendations is suppressed using the Dempster Shafer theory(DST) method, and loss of trust is minimized using trust transitive matrices. The performance of the proposed method is analyzed theoretically and experimentally. Time and space complexities are measured using asymptotic notations. In experimental results, TRMSC is evaluated for different network sizes and for target users at different distances (2 to 4‐hops), where it could perform better than existing methods.
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