利用机器学习方法对P2P网络中基于季节性和正常流行视频的视频服务器进行分类

M. Narayanan, C. Arun
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引用次数: 1

摘要

在工程和技术的大多数关键领域中,点对点(P2P)计算和应用被广泛使用。没有任何集中式服务器,它们可以共享自己的内容,因为对等体是相互链接的。这就是P2P计算增强对等体之间通信的原因。视频服务器必须在缓存中保持数据内容链接,这样才能将缓存大小扩大到一定的水平,并且缓存需要每个对等体安全维护。该方法利用机器学习方法,将注意力集中在根据季节性和非季节性流行度对视频服务器进行分类上。本文使用了两种监督式机器学习算法,解释如下。采用基于案例的推理算法对用户喜爱的视频进行分类,采用平均一相关估计(AODE)算法对视频服务器进行季节性和非季节性分类。前一种算法基于检索、重用、修改和保留方法,后一种算法将视频服务器分为季节性和非季节性视频服务器。本工作采用Java编程语言进行模拟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Categorize the video server in P2P networks based on seasonal and normal popularity videos using machine learning approach
There is a wide-ranging use of Peer-to-Peer (P2P) computing and applications in majority of the key areas of Engineering and Technology. Devoid of any centralized server, they can share their content since peers are linked with each other. This is the reason why P2P computing gives enhanced communication among peers. It is essential for the video server to maintain the data content link in cache memory so the cache memory sizes will be enlarged to a definite level and also the cache needs to be securely sustained by each and every peers. By utilizing the Machine Learning method, the proposed method centers its concentration on classifying the video server depending on seasonal and non seasonal popularity. Two supervised Machine Learning algorithms are utilized in this paper and are explained as follows. The Case-Based Reasoning algorithm is utilized in order to sort out well-liked videos and the Averaged One-Dependence Estimators (AODE) algorithm is utilized to sort out video server into seasonal and non-seasonal. The first algorithm is based on Retrieve, Reuse, Revise and Retain methods and the latter algorithm sorts out the video server into seasonal and non-seasonal based video servers. The work simulated by Java programming language.
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