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An iterative mixed integer programming method for classification accuracy maximizing discriminant analysis

机译:分类精度最大化的判别分析的迭代混合整数规划方法

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Linear discriminant functions which maximize the number of correctly classified observations in a training sample can be generated by a mixed integer programming (MIP) discriminant analysis model in which a binary variable is associated with each observation, but because of the computational requirements this model can only be applied to relatively small problems. In this paper, an iterative MIP method is developed to allow classification accuracy maximizing discriminant functions to be generated for problems with many more observations than can be considered by the standard MIP formulation. Using minimization of the sum of deviations as the objective, a mathematical programming discriminant analysis model is first used to generate a discriminant function for the complete set of observations. A neighborhood of observations about this function is then defined and a MIP model is used to generate a discriminant function that maximizes classification accuracy within this neighborhood. The process of defining a neighborhood about the most recently generated discriminant function and solving a neighborhood MIP model is repeated until there is no improvement in the total number of observations classified correctly. This new iterative MIP method is applied to a two-group problem involving 690 observations.
机译:线性判别函数可以通过混合整数编程(MIP)判别分析模型来生成最大化训练样本中正确分类的观察数的线性判别函数,在该模型中,将二进制变量与每个观察值相关联,但是由于计算要求,该模型只能适用于相对较小的问题。在本文中,开发了一种迭代MIP方法,以使针对具有更多观察结果(比标准MIP公式所考虑的问题)更多的判别函数的分类精度最大化。以偏差总和的最小化为目标,首先使用数学程序判别分析模型为整套观察结果生成判别函数。然后定义关于此功能的观察值的邻域,并使用MIP模型生成判别函数,以使该邻域内的分类精度最大化。重复定义有关最近生成的判别函数的邻域和求解邻域MIP模型的过程,直到对正确分类的观测总数没有任何改善为止。这种新的迭代MIP方法应用于涉及690个观测值的两组问题。

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