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Integrating POMDP and SARSA(λ) for Service Composition with Incomplete Information

机译:整合POMDP和SARSA(λ)以获得不完整信息的服务组合

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As a powerful computing paradigm for constructing complex distributed applications, service composition is usually addressed as a planning problem since the goal is to optimize a path for combining services to satisfy special requirements. Some planning methods assume that the state of running environment can be fully observed and monitored. However, the dynamic internet environment and opaque internal status, such as QoS attributes and invoking results, make the assumption too strict and not generally applicable. In this paper, we introduce a Partially Observable Markov Decision Process (POMDP) to model a service composition, which views the environment as partially observable and generates a policy with incomplete information. The partial observability relaxes the previous assumption and can handle the difficulties occurring in a dynamic and unpredictable environment. Based on this model, we propose a reinforcement learning algorithm to compute the optimal strategy. We conduct a series of experiments to verify the proposed algorithm, and compare it the comparison with other two algorithms. The results show the correctness and effectiveness of our algorithm.
机译:作为一种构造复杂的分布式应用程序的强大计算范例,服务组合通常作为计划问题解决,因为目标是优化组合服务的路径以满足特殊要求。一些计划方法假定可以完全观察和监视运行环境的状态。但是,动态的Internet环境和不透明的内部状态(例如QoS属性和调用结果)使该假设过于严格,因此通常不适用。在本文中,我们引入了部分可观察的马尔可夫决策过程(POMDP)来对服务组合进行建模,该模型将环境视为部分可观察的,并生成具有不完整信息的策略。部分可观察性放宽了先前的假设,并可以处理在动态且不可预测的环境中发生的困难。基于该模型,我们提出了一种强化学习算法来计算最优策略。我们进行了一系列实验以验证所提出的算法,并将其与其他两种算法进行比较。结果表明了该算法的正确性和有效性。

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