A Spatial-Temporal QoS Prediction Approach for Time-aware Web Service Recommendation

Author:

Wang Xinyu1,Zhu Jianke1,Zheng Zibin2,Song Wenjie1,Shen Yuanhong1,Lyu Michael R.3

Affiliation:

1. Zhejiang University, Hangzhou, China

2. Sun Yat-sen University

3. The Chinese University of Hong Kong

Abstract

Due to the popularity of service-oriented architectures for various distributed systems, an increasing number of Web services have been deployed all over the world. Recently, Web service recommendation became a hot research topic, one that aims to accurately predict the quality of functional satisfactory services for each end user. Generally, the performance of Web service changes over time due to variations of service status and network conditions. Instead of employing the conventional temporal models, we propose a novel spatial-temporal QoS prediction approach for time-aware Web service recommendation, where a sparse representation is employed to model QoS variations. Specifically, we make a zero-mean Laplace prior distribution assumption on the residuals of the QoS prediction, which corresponds to a Lasso regression problem. To effectively select the nearest neighbor for the sparse representation of temporal QoS values, the geo-location of web service is employed to reduce searching range while improving prediction accuracy. The extensive experimental results demonstrate that the proposed approach outperforms state-of-art methods with more than 10% improvement on the accuracy of temporal QoS prediction for time-aware Web service recommendation.

Funder

National Natural Science Foundation of China

Major State Basic Research Development Program of China

Guangdong Natural Science Foundation

Research Grants Council General Research Fund

National Key Technology R&D Program of the Ministry of Science and Technology of China

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference47 articles.

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3. Learning Collaborative Filtering and Its Application to People to People Recommendation in Social Networks

4. An empirical comparison of methods to support QoS-aware service selection

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