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A Robust Approach to Finding Trustworthy Influencer in Trust-Oriented E-Commerce Environments

机译:在面向信任的电子商务环境中寻找可信赖的影响者的鲁棒方法

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With the recognition of the significance of OSNs (Online Social Networks) in the recommendation of services in e-commerce, there are more and more e-commerce platform being combined with OSNs, forming social e-commerce, where a participant could recommend a product to his/her friends based on the participant's corresponding purchasing experience. For example, at Epinions, a buyer could share product reviews with his/her friends. In such platforms, a buyer providing lots of high quality reviews is very likely to influence many potential buyers' purchase behaviours. Such a buyer is believed to have strong social influence. However, dishonest participants in OSNs can deceive the existing social influence evaluation models, by mounting attacks, such as Constant (Dishonest advisors constantly provide unfairly positiveegative ratings to sellers.) and Camouflage (Dishonest advisors camouflage themselves as honest advisors by providing fair ratings to build up their trustworthiness first and then gives unfair ratings.), to obtain fake strong social influence. Therefore, it is crucial to devise a robust social influence evaluation model that can defend against attacks and deliver more accurate social influence evaluation results. In this paper, we propose a novel robust Trust-Aware Social Influencer Finding, TrustINF, method that considers the evolutionary trust relationship and the variations of historical social influences of participants, which can help deliver more accurate social influence evaluation results in social e-commerce. Our experiments conducted on four real social network datasets validate the effectiveness and robustness of our proposed method, which is greatly superior to the state-of-the-art method.
机译:认识到OSN(在线社交网络)在电子商务服务推荐中的重要性,越来越多的电子商务平台与OSN结合在一起,形成了社交电子商务,参与者可以在其中推荐产品根据参与者的相应购买经验向他/她的朋友发送信息。例如,在Epinions,买家可以与他/她的朋友分享产品评论。在这样的平台上,提供大量高质量评论的购买者很可能会影响许多潜在购买者的购买行为。相信这样的购买者具有很强的社会影响力。但是,OSN中不诚实的参与者可以通过发动攻击来欺骗现有的社会影响力评估模型,例如Constant(不诚实的顾问不断向卖方提供不公平的正面/负面评级。)和Camouflage(不诚实的顾问通过提供公平的评级伪装成诚实的顾问)首先建立他们的信任度,然后给予不公平的评价。),以获得假冒的强大的社会影响力。因此,设计一个强大的社会影响力评估模型至关重要,该模型可以抵御攻击并提供更准确的社会影响力评估结果。在本文中,我们提出了一种新颖的,健壮的信任感知社会影响者发现方法TrustINF,该方法考虑了演化信任关系和参与者历史社会影响的变化,可以帮助在社会电子商务中提供更准确的社会影响评估结果。我们在四个真实的社交网络数据集上进行的实验验证了我们提出的方法的有效性和鲁棒性,这大大优于最新方法。

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