We present a methodology for integrating functional data into deep densely connected feed-forward neural networks. The model is defined for scalar responses with multiple functional and scalar covariates. A by-product of the method is a set of dynamic functional weights that can be visualized during the optimization process. This visualization leads to greater interpretability of the relationship between the covariates and the response relative to conventional neural networks. The model is shown to perform well in a number of contexts including prediction of new data and recovery of the true underlying functional weights; these results were confirmed through real applications and simulation studies. A forthcoming R package is developed on top of a popular deep learning library (Keras) allowing for general use of the approach.
翻译:我们提出了一个将功能数据纳入深密密连通的进取向神经网络的方法,该模型是为具有多重功能和卡路里共变体的螺旋反应而定义的。该方法的副产品是一套动态功能权重,可在优化过程中可视化。这种可视化可以使共变体与常规神经网络相对应变之间的关系得到更大的解释。该模型在若干情况下表现良好,包括预测新数据和恢复真正的基本功能权重;这些结果通过实际应用和模拟研究得到确认。即将推出的R包是在一个受欢迎的深层学习图书馆(Keras)之上开发的,允许普遍使用该方法。