Service recommendation method based on trust extension and listwise rank learning
A sorting learning and service recommendation technology, which is applied in the field of Internet service computing, can solve the problems of inaccurate user trust relationship and sparsity, and achieve the effects of alleviating sparsity problems, accurate similarity calculation, and improving user satisfaction
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[0041] In order to make the objectives, technical solutions and advantages of the present invention clearer and more comprehensible, the present invention will be further described in detail below with reference to the accompanying drawings and technical solutions. The terms involved in this embodiment are explained as follows:
[0042] Quality of Service (QoS): Represents the non-functional attributes of Web services, including response time, credibility, availability, reliability, etc., and is an important criterion for evaluating service quality. Sorting learning: It is a method of training models using machine learning when dealing with sorting problems. It can integrate a large number of complex features and automatically learn the optimal parameters. It has been widely used in information retrieval, natural language processing and data mining. Collaborative filtering: Recommend information that users are interested in based on the preferences of groups with similar interest...
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