A new modification of the Neural Additive Model (NAM) called SurvNAM and its modifications are proposed to explain predictions of the black-box machine learning survival model. The method is based on applying the original NAM to solving the explanation problem in the framework of survival analysis. The basic idea behind SurvNAM is to train the network by means of a specific expected loss function which takes into account peculiarities of the survival model predictions and is based on approximating the black-box model by the extension of the Cox proportional hazards model which uses the well-known Generalized Additive Model (GAM) in place of the simple linear relationship of covariates. The proposed method SurvNAM allows performing the local and global explanation. A set of examples around the explained example is randomly generated for the local explanation. The global explanation uses the whole training dataset. The proposed modifications of SurvNAM are based on using the Lasso-based regularization for functions from GAM and for a special representation of the GAM functions using their weighted linear and non-linear parts, which is implemented as a shortcut connection. A lot of numerical experiments illustrate the SurvNAM efficiency.
翻译:SurvNAM的基本想法是,通过考虑到生存模型预测的特殊性的具体预期损失功能来培训网络,并以扩展Cox比例危害模型来类似黑箱模型为基础,该模型使用众所周知的通用Additive模型来取代共同变量的简单线性关系。拟议的SurvNAM方法允许进行本地和全球解释。围绕该示例的一组实例是随机生成的,用于当地解释。全球解释使用了整个培训数据集。SurvNAM的拟议修改是基于使用基于Lasso的常规化GAM功能,并使用其加权线性和非线性部分作为捷径连接来特别表述GAM功能。大量数字实验说明了SurvNAM的效率。