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Social context-aware trust inference for trust enhancement in social network based recommendations on service providers

机译:基于社交上下文感知的信任推断,可基于对服务提供商的建议来增强社交网络中的信任

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In Service-Oriented Computing environments, there is a large number of service providers providing a variety of services to service customers. Conventional recommender systems, which adopt the information filtering techniques, can be used to automatically generate recommendations of service providers to service customers who are also the system users. However, data sparsity and trust enhancement are the traditional problems in recommender systems. Targeting the data sparsity problem, recent studies on recommender systems have started to leverage information from online social networks to collect recommendations from more participants and derive the final recommendation. However, this requires the methods to infer the trust between participants without any direct interactions in online social networks, which should take into account both the social context of participants and the context of the target services to be recommended, for trust enhanced recommendations. In this paper, we first present a contextual social network model that takes into account both participants' personal characteristics (referred to as the independent social context, including preference and expertise in domains) and mutual relations (referred to as the dependent social context, including the trust, social intimacy, and interaction context between two participants). In addition, we propose a new probabilistic approach, SocialTrust, as the first solution in the literature, to social context-aware trust inference in social networks. The result delivered by this approach is particularly important in evaluating the trust from a source participant to an end recommender who recommends a target service or service provider, via the sub-network consisting of intermediate participants/recommenders between them and relevant contextual information. Moreover, we propose algorithms that consider cycles and information updates in social networks. Experiments demonstrate that our approach is effective and superior to existing trust inference methods, and can deliver more reasonable and trustworthy results. The proposed algorithms considering cycles and information updates in social networks are efficient and applicable to real social networks.
机译:在面向服务的计算环境中,有大量的服务提供商为服务客户提供各种服务。可以采用采用信息过滤技术的常规推荐系统来自动生成服务提供者的推荐,以服务于也是系统用户的客户。但是,数据稀疏性和信任增强是推荐器系统中的传统问题。针对数据稀疏性问题,最近对推荐器系统的研究已开始利用来自在线社交网络的信息来收集更多参与者的推荐并得出最终推荐。但是,这需要用于推断参与者之间的信任而没有在线社交网络中任何直接交互的方法,对于信任增强的建议,​​该方法应同时考虑参与者的社会环境和要推荐的目标服务的环境。在本文中,我们首先提出一种上下文社会网络模型,该模型考虑了参与者的个人特征(称为独立的社会上下文,包括领域的偏好和专业知识)以及相互关系(称为依赖的社会上下文,包括两个参与者之间的信任,社交亲密关系和互动背景)。此外,我们提出了一种新的概率方法,即SocialTrust,作为文献中的第一个解决方案,用于解决社交网络中对社交上下文感知的信任推断。通过这种方法,通过中间参与者/推荐者和相关上下文信息之间的子网组成的子网,评估从源参与者到推荐目标服务或服务提供商的最终推荐者的信任度,这一点尤为重要。此外,我们提出了考虑社交网络中的周期和信息更新的算法。实验表明,我们的方法是有效的,并且优于现有的信任推理方法,并且可以提供更加合理和可信赖的结果。所提出的考虑社交网络中的周期和信息更新的算法是有效的,并且适用于真实的社交网络。

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