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An illustration of variable precision rough sets model: an analysis of the findings of the UK Monopolies and Mergers Commission

机译:可变精度粗糙集模型的说明:对英国垄断与合并委员会的调查结果的分析

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This paper introduces a new technique in the investigation of limited-dependent variable models. This paper illustrates that variable precision rough set theory (VPRS), allied with the use of a modern method of classification, or discretisation of data, can out-perform the more standard approaches that are employed in economics, such as a probit model. These approaches and certain inductive decision tree methods are compared (through a Monte Carlo simulation approach) in the analysis of the decisions reached by the UK Monopolies and Mergers Committee. We show that, particularly in small samples, the VPRS model can improve on more traditional models, both in-sample, and particularly in out-of-sample prediction. A similar improvement in out-of-sample prediction over the decision tree methods is also shown.
机译:本文介绍了一种研究有限因变量模型的新技术。本文说明,可变精度粗糙集理论(VPRS)与现代分类方法或数据离散化结合使用,可以胜过经济学中采用的更为标准的方法,例如概率模型。在分析英国垄断与合并委员会达成的决策时,将这些方法和某些归纳决策树方法进行了比较(通过蒙特卡洛模拟方法)。我们表明,尤其是在小样本中,VPRS模型可以在样本内,尤其是样本外预测方面改进传统模型。还显示了与决策树方法相比的样本外预测的类似改进。

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