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    • 2. 发明授权
    • Method for feature selection and for evaluating features identified as significant for classifying data
    • 用于特征选择和评估对分类数据有重要意义的特征的方法
    • US07970718B2
    • 2011-06-28
    • US12890705
    • 2010-09-26
    • Isabelle GuyonAndre ElisseeffBernhard SchoelkopfJason Aaron Edward WestonFernando Perez-Cruz
    • Isabelle GuyonAndre ElisseeffBernhard SchoelkopfJason Aaron Edward WestonFernando Perez-Cruz
    • G06F15/18
    • G06F19/24G06F19/20G06K9/6231
    • A group of features that has been identified as “significant” in being able to separate data into classes is evaluated using a support vector machine which separates the dataset into classes one feature at a time. After separation, an extremal margin value is assigned to each feature based on the distance between the lowest feature value in the first class and the highest feature value in the second class. Separately, extremal margin values are calculated for a normal distribution within a large number of randomly drawn example sets for the two classes to determine the number of examples within the normal distribution that would have a specified extremal margin value. Using p-values calculated for the normal distribution, a desired p-value is selected. The specified extremal margin value corresponding to the selected p-value is compared to the calculated extremal margin values for the group of features. The features in the group that have a calculated extremal margin value less than the specified margin value are labeled as falsely significant.
    • 使用支持向量机将资源分为类别的“特征”组合进行评估,该支持向量机将数据集一次分为一个特征。 分离后,基于第一类中最低特征值与第二类中最高特征值之间的距离,为每个特征分配极值边缘值。 另外,对于两个类别的大量随机绘制的示例集合中的正态分布计算极值边界值,以确定具有指定的极值边界值的正态分布内的示例的数量。 使用为正态分布计算的p值,选择所需的p值。 对应于所选择的p值的指定极值余量值与所计算的特征组的极值边际值进行比较。 计算的极值余量值小于指定余量值的组中的特征被标记为错误显着。