Prediction in functional regression with discretely observed and noisy covariates

12/13/2021
by   Siegfried Hörmann, et al.
0

In practice functional data are sampled on a discrete set of observation points and often susceptible to noise. We consider in this paper the setting where such data are used as explanatory variables in a regression problem. If the primary goal is prediction, we show that the gain by embedding the problem into a scalar-on-function regression is limited. Instead we impose a factor model on the predictors and suggest regressing the response on an appropriate number of factor scores. This approach is shown to be consistent under mild technical assumptions, numerically efficient and gives good practical performance in both simulations as well as real data settings.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/19/2020

High-Dimensional Spatial Quantile Function-on-Scalar Regression

This paper develops a novel spatial quantile function-on-scalar regressi...
research
07/18/2019

Scalar-on-function local linear regression and beyond

Regressing a scalar response on a random function is nowadays a common s...
research
09/17/2021

Cross-Leverage Scores for Selecting Subsets of Explanatory Variables

In a standard regression problem, we have a set of explanatory variables...
research
12/10/2020

Preprocessing noisy functional data using factor models

We consider functional data which are measured on a discrete set of obse...
research
06/26/2020

Prediction in polynomial errors-in-variables models

A multivariate errors-in-variables (EIV) model with an intercept term, a...
research
08/10/2022

Neural Networks for Scalar Input and Functional Output

The regression of a functional response on a set of scalar predictors ca...
research
09/05/2019

Regression Models Using Shapes of Functions as Predictors

Functional variables are often used as predictors in regression problems...

Please sign up or login with your details

Forgot password? Click here to reset