预取系统信息增益下界的推导和可视化

Chung-Ping Hung, P. S. Min
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引用次数: 0

摘要

虽然预取方案已经应用于不同层次的计算,但研究工作并没有远远超出假设马尔可夫模型和探索各种应用中的局部。本文给出了预取系统信息增益的两个下界,并用决策树学习的概念将其近似可视化。利用信息增益的下界,我们可以勾勒出预取系统在响应数据集的概率模型时提高性能所需的最小容量。通过对信息增益的可视化分析,我们还得出结论,对数据集的属性进行熵编码并根据编码的属性进行预取决策有助于降低对信息跟踪能力的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deriving and visualizing the lower bounds of information gain for prefetch systems
While prefetching scheme has been used in different levels of computing, research works have not gone far beyond assuming a Markovian model and exploring localities in various applications. In this paper, we derive two lower bounds of information gain for prefetch systems and approximately visualize them in terms of decision tree learning concept. With the lower bounds of information gain, we can outline the minimum capacity required for a prefetch system to improve performance in respond to the probability model of a data set. By visualizing the analysis of information gain, We also conclude that performing entropy coding on the attributes of a data set and making prefetching decisions based on the encoded attributes can help lowering the requirement of information tracking capacity.
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