Using 2-Interactive Measures in Nonlinear Classifications

Yan Wu, Zhenyuan Wang
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Abstract

Within the classification algorithms based on signed fuzzy measures, an obvious limitation is the complexity of the algorithms due to the large number of interactions among attributes. For a data set with n attributes, the complexity of classification algorithm would be O (2n). But in the practical problems, the higher-order interactions among attributes are often not significant enough to the classification. So sometimes omitting them just sacrifices the accuracy a little but will save a lot of time and energy. Hence, a 2-interactive measure may be used to reduce the calculation complexity into O (n2). In this study, the Mobius Transformation and its reverse - Zeta Transformation are used to calculate the 2-interactions among attributes for the records. A comprehensive discussion on the semantic and geometric meanings of the parameters is given. The weighted Choquet integral with respect to a signed fuzzy measure serves as an aggregation tool to project the feature space onto a real axis to make the classification simple. To implement the classification, we need to determine the values of the signed fuzzy measure and the other parameters. This can be done by running an adaptive genetic algorithm based on a given training data set. The new classifier is tested by recovering the preset parameters from a set of artificial training data generated from these parameters.
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非线性分类中的2-交互测度
在基于签名模糊测度的分类算法中,由于属性之间存在大量的交互,算法的复杂性是一个明显的限制。对于具有n个属性的数据集,分类算法的复杂度为O (2n)。但在实际问题中,属性间的高阶交互作用往往对分类意义不够显著。所以有时省略它们只是牺牲了一点准确性,但会节省很多时间和精力。因此,可以使用双交互度量将计算复杂度降低到O (n2)。本研究采用Mobius变换及其逆Zeta变换计算记录属性间的2-交互作用。对参数的语义和几何意义进行了全面的讨论。对有符号模糊测度的加权Choquet积分作为一种聚合工具,将特征空间投影到实轴上,使分类简单。为了实现分类,我们需要确定有符号模糊测度的值和其他参数。这可以通过运行基于给定训练数据集的自适应遗传算法来完成。通过从一组由这些参数生成的人工训练数据中恢复预设参数来测试新的分类器。
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