A fully nonparametric approach for making probabilistic predictions in multi-response regression problems is introduced. Random forests are used as marginal models for each response variable and, as novel contribution of the present work, the dependence between the multiple response variables is modeled by a generative neural network. This combined modeling approach of random forests, corresponding empirical marginal residual distributions and a generative neural network is referred to as RafterNet. Multiple datasets serve as examples to demonstrate the flexibility of the approach and its impact for making probabilistic forecasts.
翻译:采用完全非对称的方法对多种反应回归问题作出概率预测,随机森林被用作每种反应变数的边际模型,作为目前工作的新贡献,多种反应变数之间的依赖性以基因神经网络为模型,随机森林、相应的经验性边际残余分布和基因性神经网络的这种综合模型方法称为RafterNet。 多个数据集作为实例,表明这种方法的灵活性及其对预测概率的影响。