In this paper we present a novel mathematical optimization-based methodology to construct tree-shaped classification rules for multiclass instances. Our approach consists of building Classification Trees in which, except for the leaf nodes, the labels are temporarily left out and grouped into two classes by means of a SVM separating hyperplane. We provide a Mixed Integer Non Linear Programming formulation for the problem and report the results of an extended battery of computational experiments to assess the performance of our proposal with respect to other benchmarking classification methods.
翻译:在本文中,我们提出了一个新的数学优化方法,用于为多级实例构建树形分类规则,我们的方法包括建立分类树,其中除了叶节点之外,标签暂时被遗漏,通过SVM分离超高平板飞机,分为两类;我们为问题提供混合整数非线性编程配方,并报告计算实验扩大的结果,以评估我们提案对其他基准分类方法的绩效。