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IRLT: Integrating Reputation and Local Trust for Trustworthy Service Recommendation in Service-Oriented Social Networks

机译:IRLT:集成信誉和本地信任以在面向服务的社交网络中推荐可信赖的服务

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摘要

With the prevalence of Social Networks (SNs) and services, plenty of trust models for Trustworthy Service Recommendation (TSR) in Service-oriented SNs (S-SNs) have been proposed. The reputation-based schemes usually do not contain user preferences and are vulnerable to unfair rating attacks. Meanwhile, the local trust-based schemes generally have low reliability or even fail to work when the trust path is too long or does not exist. Thus it is beneficial to integrate them for TSR in S-SNs. This work improves the state-of-the-art Combining Global and Local Trust (CGLT) scheme and proposes a novel Integrating Reputation and Local Trust (IRLT) model which mainly includes four modules, namely Service Recommendation Interface (SRI) module, Local Trust-based Trust Evaluation (LTTE) module, Reputation-based Trust Evaluation (RTE) module and Aggregation Trust Evaluation (ATE) module. Besides, a synthetic S-SN based on the famous Advogato dataset is deployed and the well-known Discount Cumulative Gain (DCG) metric is employed to measure the service recommendation performance of our IRLT model with comparing to that of the excellent CGLT model. The results illustrate that our IRLT model is slightly superior to the CGLT model in honest environment and significantly outperforms the CGLT model in terms of the robustness against unfair rating attacks.
机译:随着社交网络(SN)和服务的普及,已经提出了许多面向服务的SN(S-SN)中的可信服务推荐(TSR)信任模型。基于信誉的方案通常不包含用户首选项,并且容易受到不公平的评级攻击。同时,当信任路径太长或不存在时,基于本地信任的方案通常可靠性低,甚至无法工作。因此,将它们集成到S-SN中的TSR是有益的。这项工作改进了最新的全球和本地信任结合(CGLT)方案,并提出了一种新颖的集成信誉和本地信任(IRLT)模型,该模型主要包括四个模块,即服务推荐接口(SRI)模块,本地信任基于信任的评估(LTTE)模块,基于信誉的信任评估(RTE)模块和聚合信任评估(ATE)模块。此外,还基于著名的Advogato数据集部署了一个合成S-SN,并与著名的CGLT模型相比,采用了众所周知的折扣累积收益(DCG)度量来衡量我们IRLT模型的服务推荐性能。结果表明,在诚实环境下,我们的IRLT模型略优于CGLT模型,并且在抵御不公平评级攻击方面,其性能明显优于CGLT模型。

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