首页> 外国专利> SYSTEM AND METHOD FOR UTILIZING GROUPED PARTIAL DEPENDENCE PLOTS AND GAME-THEORETIC CONCEPTS AND THEIR EXTENSIONS IN THE GENERATION OF ADVERSE ACTION REASON CODES

SYSTEM AND METHOD FOR UTILIZING GROUPED PARTIAL DEPENDENCE PLOTS AND GAME-THEORETIC CONCEPTS AND THEIR EXTENSIONS IN THE GENERATION OF ADVERSE ACTION REASON CODES

机译:利用分组部分依赖地块和游戏理论概念的系统和方法及其在不利行动原因代码的产生中的延伸

摘要

A framework for interpreting machine learning models is proposed that utilizes interpretability methods to determine the contribution of groups of input variables to the output of the model. Input variables are grouped based on dependencies with other input variables. The groups are identified by processing a training data set with a clustering algorithm. Once the groups of input variables are defined, scores related to each group of input variables for a given instance of the input vector processed by the model are calculated according to one or more algorithms. The algorithms can utilize group Partial Dependence Plot (PDP) values, Shapley Additive Explanations (SHAP) values, and Banzhaf values, and their extensions among others, and a score for each group can be calculated for a given instance of an input vector per group. These scores can then be sorted, ranked, and then combined into one hybrid ranking.
机译:提出了一种解释机器学习模型的框架,其利用可解释性方法来确定输入变量组的贡献到模型的输出。 输入变量基于与其他输入变量的依赖关系进行分组。 通过处理具有聚类算法的训练数据集来识别这些组。 一旦定义了输入变量的组,根据一个或多个算法计算与模型处理的给定实例的给定实例的每组输入变量相关的分数。 该算法可以利用组部分依赖性图(PDP)值,福芙添加剂说明(Shap)值以及Banzhaf值以及其扩展,并且可以针对每个组的输入向量的给定实例计算每个组的分数 。 然后可以将这些分数排序,排序,然后组合成一个混合排名。

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