Fang Hua, Rizzo Maria L, Wang Honggang, Espy Kimberly Andrews, Wang Zhenyuan
Office of Research, University of Nebraska-Lincoln, Lincoln, NE 68588, USA.
Pattern Recognit. 2010;43(4):1393-1401. doi: 10.1016/j.patcog.2009.10.006.
This paper proposes a new nonlinear classifier based on a generalized Choquet integral with signed fuzzy measures to enhance the classification accuracy and power by capturing all possible interactions among two or more attributes. This generalized approach was developed to address unsolved Choquet-integral classification issues such as allowing for flexible location of projection lines in n-dimensional space, automatic search for the least misclassification rate based on Choquet distance, and penalty on misclassified points. A special genetic algorithm is designed to implement this classification optimization with fast convergence. Both the numerical experiment and empirical case studies show that this generalized approach improves and extends the functionality of this Choquet nonlinear classification in more real-world multi-class multi-dimensional situations.
本文提出了一种基于带符号模糊测度的广义Choquet积分的新型非线性分类器,通过捕捉两个或多个属性之间的所有可能交互来提高分类精度和能力。开发这种广义方法是为了解决未解决的Choquet积分分类问题,例如允许在n维空间中灵活定位投影线、基于Choquet距离自动搜索最小误分类率以及对误分类点进行惩罚。设计了一种特殊的遗传算法来实现这种具有快速收敛性的分类优化。数值实验和实证案例研究均表明,这种广义方法在更多实际的多类多维情况下改进并扩展了这种Choquet非线性分类的功能。