Adaptive and Dynamic Service Composition Using Q-Learning

Hongbing Wang, Xuan Zhou, Xiaoping Zhou, Weihong Liu, Wenya Li
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引用次数: 22

Abstract

In a dynamic environment, some services may become unavailable, some new services may be published and the various properties of the services, such as their prices and performance, may change. Thus, to ensure user satisfaction in the long run, it is desirable that a service composition can automatically adapt to these changes. To this end, we leverage the technology of reinforcement learning and propose a mechanism for adaptive service composition. The mechanism requires no prior knowledge about services’ quality, while being able to achieve the optimal composition solution. In addition, it allows a composite service to dynamically adjust itself to fit a varying environment. We present the design of our mechanism, and demonstrate its effectiveness through an extensive experimental evaluation.
基于q -学习的自适应动态服务组合
在动态环境中,一些服务可能不可用,一些新服务可能会发布,服务的各种属性(如价格和性能)可能会发生变化。因此,为了确保长期的用户满意度,服务组合能够自动适应这些变化是可取的。为此,我们利用强化学习技术,提出了一种自适应服务组合的机制。该机制不需要预先了解服务质量,同时能够实现最优组合解决方案。此外,它还允许组合服务动态调整自身以适应变化的环境。我们提出了我们的机制设计,并通过广泛的实验评估证明了其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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