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A Hybrid Trust-Enhanced Collaborative Filtering Recommendation Approach for Personalized Government-to-Business e-Services

机译:个性化政府对企业电子服务的混合信任增强协作过滤推荐方法

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摘要

The information overload on the World Wide Web results in the underuse of some existing e-government services within the business domain. Small-to-medium businesses (SMBs), in particular, are seeking "one-to-one" e-services from government in current highly competitive markets, and there is an imperative need to develop Web personalization techniques to provide business users with information and services specific to their needs, rather than an undifferentiated mass of information. This paper focuses on how e-governments can support businesses on the problem of selecting a trustworthy business partner to perform reliable business transactions. In the business partner selection process, trust or reputation information is crucial and has significant influence on a business user's decision regarding whether or not to do business with other business entities. For this purpose, an intelligent trust-enhanced recommendation approach to provide personalized government-to-business (G2B) e-services, and in particular, business partner recommendation e-services for SMBs is proposed. Accordingly, in this paper, we develop (1) an implicit trust filtering recommendation approach and (2) an enhanced user-based collaborative filtering (CF) recommendation approach. To further exploit the advantages of the two proposed approaches, we develop (3) a hybrid trust-enhanced CF recommendation approach (TeCF) that integrates both the proposed implicit trust filtering and the enhanced user-based CF recommendation approaches. Empirical results demonstrate the effectiveness of the proposed approaches, especially the hybrid TeCF recommendation approach in terms of improving accuracy, as well as in dealing with very sparse data sets and cold-start users.
机译:万维网上的信息过载导致业务领域内某些现有电子政务服务的使用不足。尤其是中小型企业(SMB),正在当前竞争激烈的市场中寻求政府的“一对一”电子服务,迫切需要开发Web个性化技术以向企业用户提供信息。和针对其需求的服务,而不是无差别的信息。本文重点讨论电子政务如何在选择可信赖的业务合作伙伴以执行可靠的业务交易这一问题上为企业提供支持。在业务伙伴选择过程中,信任或信誉信息至关重要,并且对业务用户是否与其他业务实体进行业务的决策有重大影响。为此,提出了一种智能的信任增强推荐方法,以提供个性化的政府对企业(G2B)电子服务,尤其是针对SMB的业务合作伙伴推荐电子服务。因此,在本文中,我们开发了(1)隐式信任过滤推荐方法和(2)增强的基于用户的协作过滤(CF)推荐方法。为了进一步利用这两种建议方法的优势,我们开发了(3)一种混合信任增强CF建议方法(TeCF),该方法将建议的隐式信任过滤和基于用户的增强CF建议方法集成在一起。实验结果证明了所提出方法的有效性,特别是混合TeCF推荐方法在提高准确性以及处理非常稀疏的数据集和冷启动用户方面的有效性。

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  • 来源
    《International Journal of Intelligent Systems》 |2011年第9期|p.814-843|共30页
  • 作者

    Qusai Shambour; Jie Lu;

  • 作者单位

    Decision Systems and e-Service Intelligence Lab, Centre for Quantum Computation and Intelligent Systems, School of Software, Faculty of Engineering and Information Technology, University of Technology Sydney, P.O. Box 123, Broadway, Sydney, NSW2007, Australia;

    Decision Systems and e-Service Intelligence Lab, Centre for Quantum Computation and Intelligent Systems, School of Software, Faculty of Engineering and Information Technology, University of Technology Sydney, P.O. Box 123, Broadway, Sydney, NSW2007, Australia;

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