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Classification Algorithms Based on Linear Combinations of Features

机译:基于线性组合的分类算法

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We provide theoretical and algorithmic tools for finding new features which enable better classification of new cases. Such features are proposed to be searched for as linear combinations of continuously valued conditions. Regardless of the choice of classification algorithm itself such an approach provides the compression of information concerning dependencies between conditional and decision features. Presented results show that properly derived combinations of attributes, treated as new elements of the conditions' set, may significantly improve the performance of well known classification algorithms, such as k-NN and rough set based approaches.
机译:我们提供了用于查找新功能的理论和算法工具,可更好地分类新案例。提出这些特征被搜索为连续值的条件的线性组合。无论分类算法的选择如何,这种方法都提供了关于条件和决策特征之间的依赖性的信息的压缩。提出的结果表明,作为条件集的新元素处理的属性组合可以显着提高众所周知的分类算法的性能,例如基于K-NN和粗糙集的方法。

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