MePPM-通过部分匹配模型预测网页预取的内存效率

C. D. Gracia, S. Sudha
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引用次数: 6

摘要

万维网的普及和互联网用户的巨大增长以及需要高带宽的服务大大增加了用户的响应时间。因此,用户在检索web对象时经常会遇到很长的延迟。web对象和web站点的流行显示出相当大的空间局部性,这使得基于先前访问的访问来预测未来访问成为可能。这一事实促使研究人员设计新的网络预取技术,以减少用户感知的延迟。大多数研究工作都是基于标准的部分匹配预测模型及其衍生模型,如最长重复序列和基于流行度的模型,这些模型使用常见的冲浪模式构建到马尔可夫预测树中。这些模型需要大量内存。因此,本文提出了基于马尔可夫模型的部分匹配模型的内存高效预测,与标准预测模型及其衍生模型相比,可以最大限度地减少内存使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MePPM- Memory efficient prediction by partial match model for web prefetching
The proliferation of World Wide Web and the immense growth of Internet users and services requiring high bandwidth have increased the response time of the users substantially. Thus, users often experience long latency while retrieving web objects. The popularity of web objects and web sites show a considerable spatial locality that makes it possible to predict future accesses based on the previous accessed ones. This infact has motivated the researchers to devise new prefetching techniques in web so as to reduce the user perceived latency. Most of the research works are based on the standard Prediction by Partial Match model and its derivates such as the Longest Repeating Sequence and the Popularity based model that are built into Markov predictor trees using common surfing patterns. These models require lot of memory. Hence, in this paper, memory efficient Prediction by Partial Match models based on Markov model are proposed to minimize memory usage compared to the standard Prediction models and its derivatives.
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