Abstract:
In the era of big data, data intensive applications have posed new challenges to the filed of service composition, i.e. composition efficiency and scalability. How to com...Show MoreMetadata
Abstract:
In the era of big data, data intensive applications have posed new challenges to the filed of service composition, i.e. composition efficiency and scalability. How to compose massive and evolving services in such dynamic scenarios is a vital problem demanding prompt solutions. As a consequence, we propose a new model for large-scale adaptive service composition in this paper. This model integrates the knowledge of reinforcement learning aiming at the problem of adaptability in a highly-dynamic environment and game theory used to coordinate agents' behavior for a common task. In particular, a multi-agent Q-learning algorithm for service composition based on this model is also proposed. The experimental results demonstrate the effectiveness and efficiency of our approach, and show a better performance compared with the single-agent Q-learning method.
Published in: 2014 IEEE International Conference on Web Services
Date of Conference: 27 June 2014 - 02 July 2014
Date Added to IEEE Xplore: 04 December 2014
ISBN Information: