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Reinforcement Learning for Query-Oriented Routing Indices in Unstructured Peer-to-Peer Networks

机译:非结构化对等网络中面向查询的路由索引的强化学习

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The idea of building query-oriented routing indices has changed the way of improving routing efficiency from the basis as it can learn the content distribution during the query routing process. It gradually improves routing efficiency with no excessive network overhead of the routing index construction and maintenance. However, the previously proposed mechanism is not practically effective due to the slow improvement of routing efficiency. In this paper, we propose a novel mechanism for queryoriented routing indices which quickly achieves high routing efficiency at low cost. The maintenance method employs reinforcement learning to utilize mass peer behaviors to construct and maintain routing indices. It explicitly uses the expected value of returned content number to depict the content distribution, which helps quickly approximate the real distribution. Meanwhile, the routing method is to retrieve as many contents as possible. It also helps speed up the learning process further. The experimental evaluation shows that the mechanism has high routing efficiency, quick learning ability and satisfactory performance under churn.
机译:面向查询的路由指标的想法已经改变了从基础上提高路由效率的方式,因为它可以在查询路由过程中学习内容分发。它逐渐提高了路由效率的路由效率,路由指数构建和维护的过度网络开销。然而,由于路由效率的改善缓慢,先前提出的机制并不实际有效。在本文中,我们提出了一种新的奇偶定期路由指数机制,其在低成本中快速实现了高路由效率。维护方法采用增强学习来利用质量对等行为来构建和维护路由指标。它显式使用返回内容号的预期值来描绘内容分发,这有助于快速近似真正的分发。同时,路由方法是检索尽可能多的内容。它还有助于进一步加速学习过程。实验评价表明,该机制的路由效率高,快速学习能力和令人满意的性能。

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