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DEA based data preprocessing for maximum decisional efficiency linear case valuation models

机译:基于DEA的数据预处理可实现最大决策效率线性案例评估模型

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摘要

In this paper, we use data envelopment analysis (DEA) to preprocess training data cases before the maximum decisional efficiency (MDE) principle is used to estimate discriminant function parameters. Using an example from the literature and simulated datasets, we compare the performance of DEA-MDE procedure for parameter estimation with traditional MDE procedure without data preprocessing. The results of our experiments indicate that the DEA-MDE procedure eliminates some inconsistencies caused by MDE principle, provides results that are consistent with an ensemble of expert decisions, reduces dimensionality of examples used in training datasets, and performs equal to or better than the MDE procedure for holdout sample tests. The DEA-MDE procedure appears to be sensitive to ciass diti distribution and best results are obtained when a class data distribution is exponential.
机译:在本文中,我们使用数据包络分析(DEA)对训练数据案例进行预处理,然后再使用最大决策效率(MDE)原理估计判别函数参数。使用来自文献和模拟数据集的示例,我们将DEA-MDE程序用于参数估计的性能与传统的MDE程序(不进行数据预处理)进行了比较。我们的实验结果表明,DEA-MDE程序消除了由MDE原理引起的一些不一致,提供了与专家决策集合一致的结果,减少了训练数据集中使用的示例的维数,并且其执行效果与MDE相同或更好保持样本测试的过程。 DEA-MDE过程似乎对直接分布很敏感,并且当类数据分布是指数分布时,可以获得最佳结果。

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