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Reinforcement Learning Approach to Improve Transmission Control Protocol

机译:强化学习方法以改进传输控制协议

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Transmission Control Protocol(TCP) plays an important role in everyday life, right from accessing ones mails to browsing the internet. With revolutionary mechanisms to ensure safe and consistent delivery of data and reducing the loss in the data transferred, TCP has indeed paved way for a paradigm shift in the way data is delivered over a network. TCP is proven to work in traditional environments involving conventional wired transmission, with well formulated packet loss restricting mechanisms implemented in the form of congestion control techniques. It is, however, found wanting in environments which involve a degree of heterogeneity (composed of wired and wireless nodes) or in purely wireless networks, involving multimedia data transmission. The performance improvement is achieved by developing a system that can classify losses as occurring due to congestion or due to the wireless nature and consequently controlling the congestion window size. This work seeks to create such a system based on reinforcement learning, where it first learns to differentiate and then predict wireless and congestion loss and consequently, predict the ideal size of congestion window thereby increasing the throughput of the system.
机译:从访问邮件到浏览Internet,传输控制协议(TCP)在日常生活中都起着重要作用。通过革命性的机制来确保安全一致地传输数据并减少传输数据的损失,TCP确实为通过网络传输数据的方式转变了铺平了道路。事实证明,TCP可在涉及传统有线传输的传统环境中工作,并且以拥塞控制技术的形式实现了精心设计的丢包限制机制。然而,发现在涉及一定程度的异构性(由有线和无线节点组成)的环境中或在涉及多媒体数据传输的纯无线网络中存在需求。通过开发一种可以将损失归类为由于拥塞或由于无线性质而发生并因此控制拥塞窗口大小的系统,可以实现性能的提高。这项工作旨在基于增强学习来创建这样的系统,在该系统中,它首先学习区分并预测无线和拥塞损失,然后预测拥塞窗口的理想大小,从而提高系统的吞吐量。

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