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Privacy aware group based recommender system in multimedia services

机译:多媒体服务中基于隐私感知组的推荐系统

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摘要

Recommending similar-interest users' groups in multimedia services is the problem of detecting for each registered user his/her membership to one interest-group of relevant consumers. The consumers in each interest-group share some relevant preferences which guarantee that the interest-group as a whole satisfies some desired properties of similarity. As a result, forming these interest-groups requires the availability of personal data of different consumers. This is a crucial requirement for different recommender systems. With the increasing trend of service providers to collect a large volume of personal data regarding their end-users, presumably to better serve them. However, a significant part of the data that is typically collected is not essential to the service being offered, or to the completion of the services it was presumably released for. Gathering such unnecessary data can be seen as a privacy threat, and storing it exposes the end-users to further unavoidable risks. In this paper, a privacy aware group based recommender system is proposed for the automated discovery of appropriate interest groups in multimedia services. A fog based middleware (FMCP) was introduced that runs at end-users' sides and allows exchanging of their information to facilities recommending and creating interest-groups without disclosing their real preferences to other consumers. The membership of consumers in various interest groups allows receiving highly appropriate and reliable multimedia content-related advices. The system utilizes two protocols to attain this goal. Experiments were performed on real dataset.
机译:在多媒体服务中推荐相似兴趣用户组是为每个注册用户检测其对相关消费者兴趣组的成员资格的问题。每个兴趣组中的消费者都有一些相关的偏好,这些偏好保证了整个兴趣组都可以满足某些相似性的期望属性。结果,形成这些兴趣群需要获得不同消费者的个人数据。对于不同的推荐系统,这是至关重要的要求。随着服务提供商越来越多地收集有关其最终用户的大量个人数据,以更好地为他们提供服务。但是,通常收集的数据中的很大一部分对于所提供的服务或完成其大概为之发布的服务并不是必需的。收集此类不必要的数据可被视为隐私威胁,存储这些数据会使最终用户面临不可避免的风险。在本文中,提出了一种基于隐私感知组的推荐器系统,用于自动发现多媒体服务中的适当兴趣组。引入了基于雾的中间件(FMCP),该中间件在最终用户侧运行,并允许将其信息交换给推荐和创建兴趣组的设施,而不会向其他消费者透露他们的真实偏好。消费者在不同兴趣组中的成员资格允许接收高度适当和可靠的多媒体内容相关建议。该系统利用两种协议来实现这一目标。实验是在真实数据集上进行的。

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