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Comparison-based agent partitioning with learning automata: A trust model for service-oriented environments

机译:具有学习自动机的基于比较的代理分区:面向服务环境的信任模型

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Service oriented environments which consist of interconnected service providers and service consumers are filled by vast numbers of services of similar functionalities and differing qualities. Finding the desirable services among others is a major problem for a typical user, who can optimize its performance by utilizing services with good qualities. This problem is sometimes addressed by relying on the votes and advices about qualities of services collected from other agents in the environment. However, there is no guarantee that all agents give fair advices about all services. The presence of unfair or malicious agents, who tend to misinform others about the quality of services, makes it necessary to develop methods for distinguishing fair and unfair agents from each other. This should be done according to the previous behavior of agents that represents their reputation and trustworthiness. Among different schemes for doing so are methods based on learning automata for partitioning user-agents to fair and unfair groups based on their previous votes on services available in the environment. Here we propose a trust model in sophisticated service-oriented environments with a simple learning automata-based method for partitioning fair/unfair objects with improved performance and reliable service selection efficiency.
机译:由相互连接的服务提供者和服务使用者组成的面向服务的环境充满了功能相似且质量不同的大量服务。对于典型的用户而言,找到期望的服务是一个主要问题,他们可以通过利用高质量的服务来优化其性能。有时可以依靠有关从环境中其他代理收集的服务质量的投票和建议来解决此问题。但是,不能保证所有代理商都会就所有服务提供公正的建议。不公平或恶意代理的存在往往会误导其他人有关服务质量的信息,因此有必要研究出区分公平代理和不公平代理的方法。这应该根据代理的先前行为来完成,该行为代表其声誉和可信度。在这样做的不同方案中,有一种基于学习自动机的方法,该方法基于用户对环境中可用服务的先前投票将用户代理划分为公平和不公平的群体。在这里,我们提出了一种在复杂的面向服务的环境中的信任模型,该信任模型具有一种基于自动学习的简单学习方法,用于对公平/不公平对象进行分区,从而提高了性能并提供了可靠的服务选择效率。

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