Multi-objective optimization based ranking prediction for cloud service recommendation
作者:
Highlights:
• Two multi-objective optimization algorithms for service recommendation are proposed.
• The two algorithms both can highly increase the diversity of service recommendation.
• The two algorithms both can hold the similar recommendation accuracy.
• The two algorithms can dock seamlessly with some other effective prediction algorithms.
• The complexity of the two algorithms can be comparable with the traditional service recommendation ones.
摘要
Performing effective ranking prediction for cloud services can help customers make prompt decisions when they are confronted by a large number of choices. This can also enhance web service user satisfaction levels. Improving ranking prediction of QoS-based services continues to be an active topic of research in cloud service recommendation. Most service recommendation algorithms focus on prediction accuracy, ignoring diversity, which also may be an important consideration. In this paper we view service recommendation as a multi-objective optimization problem, and give two modified ranking prediction and recommendation algorithms that simultaneously consider accuracy and diversity. Existing algorithm recommendations can be made much more diverse by adjusting weights on service origin and substantially reducing the risk of inappropriate recommendations. Our experiments show that the algorithms we propose can yield greater diversity without greatly sacrificing prediction accuracy.
论文关键词:Multi-objective optimization,QoS ranking,Cloud service,Service diversity,Service recommendation
论文评审过程:Received 7 January 2017, Revised 16 June 2017, Accepted 23 June 2017, Available online 28 June 2017, Version of Record 19 August 2017.
论文官网地址:https://doi.org/10.1016/j.dss.2017.06.005