4.3 Article

A PageRank-based reputation model for personalised manufacturing service recommendation

期刊

ENTERPRISE INFORMATION SYSTEMS
卷 11, 期 5, 页码 672-693

出版社

TAYLOR & FRANCIS LTD
DOI: 10.1080/17517575.2015.1077998

关键词

Collaborative filtering; manufacturing service; PageRank algorithm; service discovery; service recommendation; social network

资金

  1. China National Natural Science Foundation [51375429, 71301142, 51475410, 51175462]
  2. Zhejiang Natural Science Foundation of China [LY13E050010]

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The number of manufacturing services for cross-enterprise business collaborations is increasing rapidly because of the explosive growth of Web service technologies. This trend demands intelligent and robust models to address information overload in order to enable efficient discovery of manufacturing services. In this paper, we present a personalised manufacturing service recommendation approach, which combines a PageRank-based reputation model and a collaborative filtering technique in a unified framework for recommending the right manufacturing services to an active service user for supply chain deployment. The novel aspect of this research is adapting the PageRank algorithm to a network of service-oriented multi-echelon supply chain in order to determine both user reputation and service reputation. In addition, it explores the use of these methods in alleviating data sparsity and cold start problems that hinder traditional collaborative filtering techniques. A case study is conducted to validate the practicality and effectiveness of the proposed approach in recommending the right manufacturing services to active service users.

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