分类中带线性核的Choquet积分表达式的唯一性

Weiwei Zhang, Wei Chen, Zhenyuan Wang
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引用次数: 1

摘要

Choquet积分在非线性多元回归和非线性分类等数据挖掘中得到了广泛的应用。在Choquet积分中采用带符号的效率度量,使模型更加强大。推广上述模型的另一个想法是在Choquet积分中使用线性核心。该方法已成功地应用于非线性多元回归。然而,在分类模型中表示Choquet积分存在唯一性问题,因此很难解释每个单个属性及其组合对目标的确切贡献率。在这项工作中,对参数进行了额外的限制,以保证表达式的唯一性。
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On the uniqueness of the expression for the Choquet integral with linear core in classification
The Choquet integral has been applied in data mining, such as nonlinear multiregressions and nonlinear classifications. Adopting signed efficiency measures in the Choquet integral makes the models more powerful. Another idea for generalizing the above-mensioned models is to use a linear core in the Choquet integral. This has been successfully used in nonlinear mulregression. However, there is a uniqueness problem for presenting the Choquet integral in classification models such that it is difficult to explain the exact contribution rate from each individual attributes, as well as their combinations, towards the target. In this work, an additional restriction on the parameters is given to guarantee the uniqueness of the expression.
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