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SEQUENTIAL FORWARD FEATURE SELECTION WITH LOW COMPUTATIONAL COST

机译:计算成本低的顺序前向特征选择

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摘要

This paper presents a novel method to control the number of cross-validation repetitions in sequential forward feature selection algorithms. The criterion for selecting a feature is the probability of correct classification achieved by the Bayes classifier when the class feature probability density function is modeled by a single multivariate Gaussian density. Let the probability of correct classification achieved by the Bayes classifier be a random variable. We demonstrate by experiments that the probability density function of the latter random variable can be modeled by a Gaussian density. Based on this observation, a method for reducing the computational burden in sequential forward selection algorithms is proposed. The method predicts the number of crossvalidation repetitions by employing a t-test to guarantee that a statistically significant improvement in the probability of correct classification is obtained by increasing the number of selected features. The proposed method is twice feaster than the sequential forward selection algorithm that uses a fixed number of crossvalidation repetitions and it maintains the performance of the sequential floating forward selection algorithm.
机译:本文提出了一种新的方法来控制顺序前向特征选择算法中交叉验证重复的次数。选择特征的标准是当通过单个多元高斯密度对类特征概率密度函数进行建模时,贝叶斯分类器实现正确分类的概率。让贝叶斯分类器实现正确分类的概率为随机变量。我们通过实验证明了后者随机变量的概率密度函数可以用高斯密度建模。基于这种观察,提出了一种减少顺序前向选择算法中计算量的方法。该方法通过采用t检验来预测交叉验证重复的次数,以确保通过增加所选特征的数量在统计上显着改善正确分类的概率。所提出的方法比使用固定数量的交叉验证重复的顺序前向选择算法要快两倍,并且它保持了顺序浮动前向选择算法的性能。

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