PAKDD-2007交叉销售问题的抽样和堆叠能力

P. Adeodato, G. C. Vasconcelos, A. L. Arnaud, Rodrigo C. L. V. Cunha, Domingos S. M. P. Monteiro, R. Neto
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引用次数: 22

摘要

本文针对PAKDD-2007竞争交叉销售问题提出了一种有效的解决方案。该解决方案基于一种全面的方法,包括创建新的输入变量,有效的数据准备和转换,适当的数据采样策略以及两种最强大的建模技术的组合。由于目标类中非常少量的示例所带来的复杂性,模型鲁棒性的方法是产生11个模型的中位数得分,这些模型是用11倍交叉验证过程的适应版本开发的,并通过堆叠、MLP神经网络和n元组分类器结合使用两种鲁棒技术。尽管问题很复杂,但通过KS2和ROC曲线测量的预测数据集(未标记样本)的性能显示出非常有效,并成为比赛的亚军解决方案。
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The Power of Sampling and Stacking for the PAKDD-2007 Cross-Selling Problem
This article presents an efficient solution for the PAKDD-2007 Competition cross-selling problem. The solution is based on a thorough approach which involves the creation of new input variables, efficient data preparation and transformation, adequate data sampling strategy and a combination of two of the most robust modeling techniques. Due to the complexity imposed by the very small amount of examples in the target class, the approach for model robustness was to produce the median score of the 11 models developed with an adapted version of the 11-fold cross-validation process and the use of a combination of two robust techniques via stacking, the MLP neural network and the n-tuple classifier. Despite the problem complexity, the performance on the prediction data set (unlabeled samples), measured through KS2 and ROC curves was shown to be very effective and finished as the first runner-up solution of the competition.
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