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A simple weighting scheme for classification in two-group discriminant problems

机译:两组判别问题的简单加权方案

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This paper introduces a new weighted linear programming model, which is simple and has strong intuitive appeal for two-group classifications. Generally, in applying weights to solve a classification problem in discriminant analysis where the relative importance of every observation is known, larger weights (penalties) will be assigned to those more important observations. The perceived importance of an observation is measured here as the willingness of the decision-maker to misclassify this observation. For instance, a decision-maker is least willing to see a classification rule that misclassifies a top financially strong firm to the group that contains bankrupt firms. Our weighted-linear programming model provides an objective-weighting scheme whereby observations can be weighted according to their perceived importance. The more important this observation, the heavier its assigned weight. Results of a simulation experiment that uses contaminated data show that the weighted linear programming model consistently and significantly outperforms existing linear programming and standard statistical approaches in attaining higher average hit-ratios in the 100 replications for each of the 27 cases tested.
机译:本文介绍了一种新的加权线性规划模型,该模型简单且对两组分类具有很强的直观吸引力。通常,在判别分析中应用权重来解决分类问题(其中每个观察值的相对重要性均已知)时,会将较大的权重(惩罚)分配给那些更重要的观察值。此处,将观察到的感知重要性衡量为决策者是否愿意对该观察进行错误分类。例如,决策者最不愿意看到分类规则,该规则将财务状况最佳的公司错误地分类为包含破产公司的组。我们的加权线性规划模型提供了一种客观加权方案,可根据观察到的重要性对观察结果进行加权。此观察结果越重要,其分配的权重就越大。使用受污染数据的模拟实验的结果表明,在测试的27个案例中,每100个重复中,加权线性规划模型在获得更高的平均命中率时,始终且显着优于现有的线性规划和标准统计方法。

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