Independent Directions-Based Algorithm for Classification Targets

D. Constantin, L. State
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Abstract

The reported work proposes a new algorithm for classification tasks, an algorithm based on independent directions of the sample data. The classes are learned by the algorithm using the information contained by samples randomly generated from them. The learning process is based on the set of class skeletons, where the class skeleton is represented by the independent axes estimated from data. Basically, for each new sample, the recognition algorithm classifies it in the class whose skeleton is the "nearest" to this example. Comparative analysis is performed and experimentally derived conclusions concerning the performance of the proposed method are reported in the final section of the paper for signals recognition applications.
基于独立方向的目标分类算法
本文提出了一种基于样本数据独立方向的分类算法。算法使用随机生成的样本所包含的信息来学习这些类。学习过程基于类骨架集,其中类骨架由数据估计的独立轴表示。基本上,对于每个新样本,识别算法将其分类到骨架“最接近”此示例的类中。在本文的最后一节中,对所提出的方法的性能进行了比较分析,并报告了实验得出的结论,用于信号识别应用。
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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