Nonlinear Functional Output Regression: a Dictionary Approach

03/03/2020
by   Dimitri Bouche, et al.
0

Many applications in signal processing involve data that consists in a high number of simultaneous or sequential measurements of the same phenomenon. Such data is inherently high dimensional, however it contains strong within observation correlations and smoothness patterns which can be exploited in the learning process. A relevant modelling is provided by functional data analysis. We consider the setting of functional output regression. We introduce Projection Learning, a novel dictionary-based approach that combines a representation of the functional output on this dictionary with the minimization of a functional loss. This general method is instantiated with vector-valued kernels, allowing to impose some structure on the model. We prove general theoretical results on projection learning, with in particular a bound on the estimation error. From the practical point of view, experiments on several data sets show the efficiency of the method. Notably, we provide evidence that Projection Learning is competitive compared to other nonlinear output functional regression methods and shows an interesting ability to deal with sparsely observed functions with missing data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/28/2015

Operator-valued Kernels for Learning from Functional Response Data

In this paper we consider the problems of supervised classification and ...
research
04/01/2006

Theoretical Properties of Projection Based Multilayer Perceptrons with Functional Inputs

Many real world data are sampled functions. As shown by Functional Data ...
research
03/01/2022

Adaptive nonparametric estimation in the functional linear model with functional output

In this paper, we consider a functional linear regression model, where b...
research
08/09/2014

Scalable Matrix-valued Kernel Learning for High-dimensional Nonlinear Multivariate Regression and Granger Causality

We propose a general matrix-valued multiple kernel learning framework fo...
research
06/15/2020

Linear functional regression with truncated signatures

We place ourselves in a functional regression setting and propose a nove...
research
05/11/2020

Scalable Interpretable Learning for Multi-Response Error-in-Variables Regression

Corrupted data sets containing noisy or missing observations are prevale...
research
05/25/2021

Functional Data Analysis with Rough Sampled Paths?

Functional data are typically modeled as sampled paths of smooth stochas...

Please sign up or login with your details

Forgot password? Click here to reset