基于数据矩阵不变量的分类

V. Shats
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引用次数: 2

摘要

本文通过计算特征指标的矩阵序列来解决问题的分类问题,这些矩阵近似于数据矩阵的不变量。这里,特征索引是特征值的间隔的索引,间隔的数量是一个参数。指数相等的对象形成颗粒,包括信息颗粒,它们对应于某一类的训练样本的对象。根据信息颗粒长度的比率,我们获得了任何特征的频率间隔,这些特征对于对照样本的适当对象是相同的。然后,对于任意对象,我们在每个类中找到对象概率估计,然后找到对应于最大概率的对象类。对于一个参数值序列,我们发现了一个收敛的误差率序列。旨在增加数据多样性和压缩稀有数据的参数产生了额外的效果。使用该方法获得的结果的高精度和稳定性已被来自UCI存储库的九个数据集所证实。由于算法的简单性、通用性以及解的准确性,所提出的方法与现有方法相比具有明显的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification Based on Invariants of the Data Matrix
The paper proposes a solution to the problem classification by calculating the sequence of matrices of feature indices that approximate invariants of the data matrix. Here the feature index is the index of interval for feature values, and the number of intervals is a parameter. Objects with the equal indices form granules, including information granules, which correspond to the objects of the training sample of a certain class. From the ratios of the information granules lengths, we obtain the frequency intervals of any feature that are the same for the appropriate objects of the control sample. Then, for an arbitrary object, we find object probability estimation in each class and then the class of object that corresponds to the maximum probability. For a sequence of the parameter values, we find a converging sequence of error rates. An additional effect is created by the parameters aimed at increasing the data variety and compressing rare data. The high accuracy and stability of the results obtained using this method have been confirmed for nine data set from the UCI repository. The proposed method has obvious advantages over existing ones due to the algorithm’s simplicity and universality, as well as the accuracy of the solutions.
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