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Transmission Quality Classification with Use of Fusion of Neural Network and Genetic Algorithm in PayRequire Multi-Agent Managed Network

机译:传输质量分类利用融合神经网络和遗传算法在付费和需要多功能托管网络中的遗传算法

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摘要

Modern computer systems practically cannot function without a computer network. New concepts of data transmission are emerging, e.g., programmable networks. However, the development of computer networks entails the need for development in one more aspect, i.e., the quality of the data transmission through the network. The data transmission quality can be described using parameters, i.e., delay, bandwidth, packet loss ratio and jitter. On the basis of the obtained values, specialists are able to state how measured parameters impact on the overall quality of the provided service. Unfortunately, for a non-expert user, understanding of these parameters can be too complex. Hence, the problem of translation of the parameters describing the transmission quality appears understandable to the user. This article presents the concept of using Machine Learning (ML) to solve the above-mentioned problem, i.e., a dynamic classification of the measured parameters describing the transmission quality in a certain scale. Thanks to this approach, describing the quality will become less complex and more understandable for the user. To date, some studies have been conducted. Therefore, it was decided to use different approaches, i.e., fusion of a neural network (NN) and a genetic algorithm (GA). GA’s were choosen for the selection of weights replacing the classic gradient descent algorithm. For learning purposes, 100 samples were obtained, each of which was described by four features and the label, which describes the quality. In the reasearch carried out so far, single classifiers and ensemble learning have been used. The current result compared to the previous ones is better. A relatively high quality of the classification was obtained when we have used 10-fold stratified cross-validation, i.e., SEN = 95% (overall accuracy). The incorrect classification was 5/100, which is a better result compared to previous studies.
机译:现代计算机系统实际上无法在没有计算机网络的情况下运行。数据传输的新概念是新兴的,例如可编程网络。然而,计算机网络的开发需要在一个方面的一个方面,即通过网络的数据传输的质量。可以使用参数,即延迟,带宽,丢包比和抖动来描述数据传输质量。在获得的价值观的基础上,专家能够说明测量的参数如何影响所提供服务的整体质量。不幸的是,对于非专家用户来说,对这些参数的理解可能太复杂。因此,对描述传输质量的参数的翻译问题看起来对用户可以理解。本文介绍了使用机器学习(ML)来解决上述问题的概念,即,测量参数的动态分类,其描述了一定规模的传输质量。由于这种方法,描述了质量将变得更加复杂,对用户更加理解。迄今为止,已经进行了一些研究。因此,决定使用不同的方法,即神经网络(NN)和遗传算法(GA)融合。遗布选择选择替换经典梯度下降算法的权重。为了学习目的,获得了100个样品,每个样品由四个特征和标签描述,描述了质量。在到目前为止执行的Realearch中,已经使用了单一分类器和集合学习。与以前的结果相比,当前结果更好。当我们使用10倍的分层交叉验证时,获得了相对高质量的分类,即,SEN = 95%(总体精度)。与以前的研究相比,不正确的分类为5/100,这是一个更好的结果。

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