In many practical applications, such as fraud detection, credit risk modeling or medical decision making, classification models for assigning instances to a predefined set of classes are required to be both precise as well as interpretable. Linear modeling methods such as logistic regression are often adopted, since they offer an acceptable balance between precision and interpretability. Linear methods, however, are not well equipped to handle categorical predictors with high-cardinality or to exploit non-linear relations in the data. As a solution, data preprocessing methods such as weight-of-evidence are typically used for transforming the predictors. The binning procedure that underlies the weight-of-evidence approach, however, has been little researched and typically relies on ad-hoc or expert driven procedures. The objective in this paper, therefore, is to propose a formalized, data-driven and powerful method. To this end, we explore the discretization of continuous variables through the binning of spline functions, which allows for capturing non-linear effects in the predictor variables and yields highly interpretable predictors taking only a small number of discrete values. Moreover, we extend upon the weight-of-evidence approach and propose to estimate the proportions using shrinkage estimators. Together, this offers an improved ability to exploit both non-linear and categorical predictors for achieving increased classification precision, while maintaining interpretability of the resulting model and decreasing the risk of overfitting. We present the results of a series of experiments in a fraud detection setting, which illustrate the effectiveness of the presented approach. We facilitate reproduction of the presented results and adoption of the proposed approaches by providing both the dataset and the code for implementing the experiments and the presented approach.
翻译:在许多实际应用中,如欺诈检测、信用风险建模或医疗决策等许多实际应用中,将事件分配到预先确定的一组类别所需的分类模型必须既准确又可解释。物流回归等线性模型方法往往被采用,因为它们在精确性和可解释性之间提供了可接受的平衡。然而,线性方法并不具备处理心电图高或利用数据非线性关系的充分条件。作为一种解决办法,通常使用诸如证据权重等预处理方法来改造预测器。然而,作为证据权重方法的基础的宾客程序,却很少进行过研究,而且通常依赖临时或专家驱动的程序。因此,本文件的目标是提出一种正规、数据驱动和强有力的方法。为此,我们探讨通过螺纹性功能的集载式功能对连续变量进行离散化处理,从而能够捕捉到预测器中非线性方法的影响,并产生高度可解释的预测器,仅使用少量的离析性值。此外,我们利用这一精确性实验和精确性估算方法,从而得出了目前所展示的准确性数据的准确性,同时,我们又利用这一精确性估算和精确性推算方法,从而得出了目前所展示的精确性估算和精确性评估的精确性估算结果。