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Combining Social Balance Theory and Collaborative Filtering for Service Recommendation in Sparse Environment

机译:结合社会平衡理论和协同过滤进行稀疏环境下的服务推荐

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摘要

With the ever-increasing number of web services registered in service communities, many users are apt to find their interested web services, through various recommendation techniques, e.g., Collaborative Filtering (i.e., CF)-based recommendation. Generally, the CF-based recommendation approaches can work well, when the target user has similar friends or the target services (i.e., the services preferred by target user) have similar services. However, in certain situations when user-service rating data is sparse, it is possible that target user has no similar friends and target services have no similar services; in this situation, traditional CF-based recommendation approaches fail to generate a satisfying recommendation result, which brings a great challenge for accurate service recommendation. In view of this challenge, we combine Social Balance Theory (i.e., SBT) and CF to put forward a novel recommendation approach Rec_(SBT+CF). Finally, the feasibility of our proposal is validated, through a set of simulation experiments deployed on MovieLens-1M dataset.
机译:随着在服务社区中注册的Web服务数量的不断增加,许多用户倾向于通过各种推荐技术,例如基于协作过滤(即CF)的推荐来找到他们感兴趣的Web服务。通常,当目标用户具有相似的朋友或目标服务(即目标用户偏爱的服务)具有相似的服务时,基于CF的推荐方法可以很好地工作。但是,在某些情况下,用户服务评级数据稀疏时,目标用户可能没有相似的朋友,目标服务也没有相似的服务;在这种情况下,传统的基于CF的推荐方法无法产生令人满意的推荐结果,这给准确的服务推荐带来了很大的挑战。鉴于这一挑战,我们结合了社会平衡理论(即SBT)和CF,提出了一种新颖的推荐方法Rec_(SBT + CF)。最后,通过在MovieLens-1M数据集上部署的一组模拟实验验证了我们建议的可行性。

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  • 会议地点 Zhangjiajie(CN)
  • 作者单位

    State Key Laboratory for Novel Software Technology The Department of Computer Science and Technology Nanjing University Nanjing 210023 China School of Information Science and Engineering Qufu Normal University Rizhao 276826 China;

    State Key Laboratory for Novel Software Technology The Department of Computer Science and Technology Nanjing University Nanjing 210023 China;

    State Key Laboratory for Novel Software Technology The Department of Computer Science and Technology Nanjing University Nanjing 210023 China Department of Electrical and Computer Engineering University of Auckland Auckland 1023 New Zealand;

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  • 关键词

    Service recommendation; Sparse data; Friend user; Enemy user; Social Balance Theory; Collaborative Filtering;

    机译:服务建议;稀疏数据;朋友用户;敌人用户;社会平衡理论;协同过滤;

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