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Improving the Predictive Power of AdaBoost: A Case Study in Classifying Borrowers

机译:提高AdaBoost的预测能力:以借款人分类为例

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摘要

Boosting is one of the recent major developments in classification methods. The technique works by creating different versions of a classifier using an adaptive resampling procedure and then combining these classifiers using weighted voting. In this paper, several modifications of the original version of boosting, the AdaBoost algorithm introduced by Y. Freund and R.E. Schapire in 1996, will be explained. These will be shown to substantially improve the predictive power of the original version. In the first modification, weighted error estimation in AdaBoost is replaced by unweighted error estimation and this is designed to reduce the impact of observations that possess large weight. In the second modification, only a selection of base classifiers, i.e. those that contribute significantly to predictive power of the boosting model, will be included in the final model. In addition to these two modifications, we will also utilise different classification techniques as base classifiers in order to product a final boosting model. Applying these proposed modifications to three data sets from the banking industry provides results which indicate a significant and substantial improvement in predictive power over the original AdaBoost algorithm.
机译:提升是分类方法的最新主要发展之一。该技术的工作原理是使用自适应重采样过程创建分类器的不同版本,然后使用加权投票将这些分类器组合在一起。在本文中,对Boosting原始版本(由Y. Freund和R.E.提出的AdaBoost算法)进行了一些修改。将在1996年对Schapire进行解释。这些将显示出可以大大提高原始版本的预测能力。在第一个修改中,将AdaBoost中的加权误差估计替换为非加权误差估计,其目的是减少具有较大权重的观测结果的影响。在第二修改中,仅基本分类器的选择,即对提升模型的预测能力有重大贡献的基本分类器将被包括在最终模型中。除了这两个修改之外,我们还将利用不同的分类技术作为基本分类器,以产生最终的增强模型。将这些建议的修改应用于来自银行业的三个数据集可提供结果,这些结果表明,与原始AdaBoost算法相比,预测能力有了显着和显着的提高。

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