在云中使用Q-Learning的自适应Web服务组合

Yu Lei, Zhili Wang, Lingli Meng, Jiang Wang, Luoming Meng, Xue-song Qiu
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引用次数: 13

摘要

大量的网络服务正在云端出现。它们是分布的、异构的、自治的和动态的。这些特征可能使组合服务不稳定且不灵活。为了适应这种环境,我们提出了一种为web服务组合开发并应用于web服务组合的机器学习策略。通过这种方式,组合框架不断了解当前最适合选择和组合哪些web服务候选者来完成更复杂的任务。由于学习过程没有停止,框架能够根据动态环境中不断变化的条件调整其组合策略。通过实例分析,对该学习算法进行了评价,并与相关工作结果进行了比较,结果表明该方法提高了服务组合的成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Web Services Composition Using Q-Learning in Cloud
Plenty of web services are emerging in clouds. They are distributed, heterogeneous, autonomous and dynamic. These characteristics may make a composite service unstable and inflexible. To adapt to this environment, we propose a machine learning strategy that is developed for and applied to web service composition. This way, the composition framework continually learns which web service candidates are currently best suited to be selected and composed to fulfill more complex tasks. Since the learning process is not stopped, the framework is able to adapt its composition strategies to changing conditions in dynamic environments. A case study is given and the learning algorithm is evaluated and compared to the results of related work, which shows that our method improves the success rate of service composition.
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