...
首页> 外文期刊>South African Journal of Science >An empirical investigation of alternative semi-supervised segmentation methodologies
【24h】

An empirical investigation of alternative semi-supervised segmentation methodologies

机译:替代半监督分割方法的实证研究

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Segmentation of data for the purpose of enhancing predictive modelling is a well-established practice in the banking industry. Unsupervised and supervised approaches are the two main types of segmentation and examples of improved performance of predictive models exist for both approaches. However, both focus on a single aspect – either target separation or independent variable distribution – and combining them may deliver better results. This combination approach is called semi-supervised segmentation. Our objective was to explore four new semi-supervised segmentation techniques that may offer alternative strengths. We applied these techniques to six data sets from different domains, and compared the model performance achieved. The original semi-supervised segmentation technique was the best for two of the data sets (as measured by the improvement in validation set Gini), but others outperformed for the other four data sets.Significance:? We propose four newly developed semi-supervised segmentation techniques that can be used as additional tools for segmenting data before fitting a logistic regression.? In all comparisons, using semi-supervised segmentation before fitting a logistic regression improved the modelling performance (as measured by the Gini coefficient on the validation data set) compared to using unsegmented logistic regression.
机译:为了增强预测模型的目的而对数据进行分割是银行业公认的做法。无监督和监督方法是分割的两种主要类型,两种方法都存在预测模型性能提高的示例。但是,两者都集中于一个方面-目标分离或自变量分布-并将它们组合在一起可能会产生更好的结果。这种组合方法称为半监督分割。我们的目标是探索四种可能提供替代优势的新型半监督分割技术。我们将这些技术应用于来自不同领域的六个数据集,并比较了所获得的模型性能。原始的半监督分割技术对于其中两个数据集是最佳的(通过验证集Gini的改进来衡量),但其他方法则优于其他四个数据集。我们提出了四种新开发的半监督分割技术,这些技术可在拟合逻辑回归之前用作分割数据的附加工具。在所有比较中,与使用非分段逻辑回归相比,在拟合逻辑回归之前使用半监督分割可以提高建模性能(通过验证数据集上的基尼系数来衡量)。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号