Neural networks are suggested for learning a map from $d$-dimensional samples with any underlying dependence structure to multivariate uniformity in $d'$ dimensions. This map, termed DecoupleNet, is used for dependence model assessment and selection. If the data-generating dependence model was known, and if it was among the few analytically tractable ones, one such transformation for $d'=d$ is Rosenblatt's transform. DecoupleNets have multiple advantages. For example, they only require an available sample and are applicable to $d'<d$, in particular $d'=2$. This allows for simpler model assessment and selection, both numerically and, because $d'=2$, especially graphically. A graphical assessment method has the advantage of being able to identify why, or in which region of the domain, a candidate model does not provide an adequate fit, thus leading to model selection in particular regions of interest or improved model building strategies in such regions. Through simulation studies with data from various copulas, the feasibility and validity of this novel DecoupleNet approach is demonstrated. Applications to real world data illustrate its usefulness for model assessment and selection.
翻译:建议建立神经网络,以便从具有任何基本依赖结构的以美元为单位的维维样本中学习一张地图,到以美元为单位的多变量统一度。这张名为DecupleNet的地图用于依赖模型的评估和选择。如果数据生成依赖模型为人所知,如果它是可分析可移植的少数模型之一,美元=d$的这种变换就是Rosenblatt的变换。DecupleNet具有多种优势。例如,它们仅需要现有样本,并适用于美元<d'd',特别是$d'=2$。这样可以进行更简单的模型评估和选择,数字上和因为美元=2$,特别是图形上。一个图形评估方法的优势是能够确定为什么或者在域的哪个区域,候选模型不能提供合适的选择,从而导致在特定感兴趣的区域进行模型选择,或者在这类区域改进模型建设战略。通过模拟研究,这种新型DecoupleNet方法的可行性和有效性得到验证。对真实世界数据的应用说明其用于模型评估和选择的有用性。