A Monte Carlo-Based Search Strategy for Dimensionality Reduction in Performance Tuning Parameters

A. Omondi, I. A. Lukandu, G. Wanyembi
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Abstract

Redundant and irrelevant features in high dimensional data increase the complexity in underlying mathematical models. It is necessary to conduct pre-processing steps that search for the most relevant features in order to reduce the dimensionality of the data. This study made use of a meta-heuristic search approach which uses lightweight random simulations to balance between the exploitation of relevant features and the exploration of features that have the potential to be relevant. In doing so, the study evaluated how effective the manipulation of the search component in feature selection is on achieving high accuracy with reduced dimensions. A control group experimental design was used to observe factual evidence. The context of the experiment was the high dimensional data experienced in performance tuning of complex database systems. The Wilcoxon signed-rank test at .05 level of significance was used to compare repeated classification accuracy measurements on the independent experiment and control group samples. Encouraging results with a p-value < 0.05 were recorded and provided evidence to reject the null hypothesis in favour of the alternative hypothesis which states that meta-heuristic search approaches are effective in achieving high accuracy with reduced dimensions depending on the outcome variable under investigation.
一种基于蒙特卡罗的性能调整参数降维搜索策略
高维数据中的冗余和不相关特征增加了底层数学模型的复杂性。为了降低数据的维数,有必要进行搜索最相关特征的预处理步骤。这项研究使用了元启发式搜索方法,该方法使用轻量级随机模拟来平衡相关特征的开发和潜在相关特征的探索。在这样做的过程中,该研究评估了特征选择中搜索组件的操作在降低维度的情况下实现高精度方面的有效性。对照组实验设计用于观察事实证据。实验的背景是在复杂数据库系统的性能调整中所经历的高维数据。使用0.05显著性水平的Wilcoxon符号秩检验来比较独立实验和对照组样本的重复分类准确性测量。记录了p值<0.05的令人鼓舞的结果,并提供了拒绝零假设而支持替代假设的证据,替代假设指出元启发式搜索方法在根据调查的结果变量降低维度的情况下有效地实现了高精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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