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A Supervised Feature Extraction Algorithm forMulti-class

机译:一种多类监督特征提取算法

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In this paper, a novel supervised information feature extraction algorithm is set up. Firstly, according to the information theories, we carried out analysis for the concept and its properties of the cross entropy, then put forward a kind of lately concept of symmetry cross entropy (SCE), and point out that the SCE is a kind of distance measure, which can be used to measure the difference of two random variables. Secondly, Based on the SCE, the average symmetry cross entropy (ASCE) is set up, and it can be used to measure the difference degree of a multi-class problem. Regarding the ASCE separability criterion of the multi-class for information feature extraction, a novel algorithm for information feature extraction is constructed. At last, the experimental results demonstrate that the algorithm here is valid and reliable, and provides a new research approach for feature extraction, data mining and pattern recognition.
机译:建立了一种新型的监督信息特征提取算法。首先根据信息理论对交叉熵的概念及其性质进行了分析,然后提出了一种对称交叉熵(SCE)的最新概念,指出了对称交叉熵是一种距离测量,可用于测量两个随机变量的差。其次,基于SCE,建立了平均对称交叉熵(ASCE),可用于度量多类问题的差异程度。针对多类信息特征提取的ASCE可分离性准则,构造了一种新的信息特征提取算法。最后,实验结果表明该算法是有效和可靠的,为特征提取,数据挖掘和模式识别提供了一种新的研究方法。

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