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Deep Learning With Functional Inputs

Barinder Thind, Kevin Multani, Jiguo Cao

2022Journal of Computational and Graphical Statistics38 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

InterpretabilityComputer scienceArtificial intelligenceFunctional data analysisMachine learningDeep learningCovariateVisualizationArtificial neural networkSet (abstract data type)Scalar (mathematics)Process (computing)Data miningMathematicsGeometryProgramming languageOperating systemGaussian Processes and Bayesian InferenceMachine Learning and Data ClassificationExplainable Artificial Intelligence (XAI)
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