Maximum Likelihood Estimation of Spatially Varying Coefficient Models for Large Data with an Application to Real Estate Price Prediction

01/22/2020
by   Jakob A. Dambon, et al.
0

In regression models for spatial data, it is often assumed that the marginal effects of covariates on the response are constant over space. In practice, this assumption might often be questionable. In this article, we show how a Gaussian process-based spatially varying coefficient (SVC) model can be estimated using maximum likelihood estimation (MLE). In addition, we present an approach that scales to large data by applying covariance tapering. We compare our methodology to existing methods such as a Bayesian approach using the stochastic partial differential equation (SPDE) link, geographically weighted regression (GWR), and eigenvector spatial filtering (ESF) in both a simulation study and an application where the goal is to predict prices of real estate apartments in Switzerland. The results from both the simulation study and application show that the MLE approach results in increased predictive accuracy and more precise estimates. Since we use a model-based approach, we can also provide predictive variances. In contrast to existing model-based approaches, our method scales better to data where both the number of spatial points is large and the number of spatially varying covariates is moderately-sized, e.g., above ten.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/06/2021

Joint Variable Selection of both Fixed and Random Effects for Gaussian Process-based Spatially Varying Coefficient Models

Spatially varying coefficient (SVC) models are a type of regression mode...
research
02/04/2020

Modeling spatial data using local likelihood estimation and a Matérn to SAR translation

Modeling data with non-stationary covariance structure is important to r...
research
07/15/2021

Estimation of spatially varying parameters with application to hyperbolic SPDEs

More often than not, we encounter problems with varying parameters as op...
research
07/25/2020

A Bayesian framework for case-cohort Cox regression: application to dietary epidemiology

The case-cohort study design bypasses resource constraints by collecting...
research
07/17/2018

Spatially varying coefficient modeling for large datasets: Eliminating N from spatial regressions

While spatially varying coefficient (SVC) modeling is popular in applied...
research
06/16/2020

Modeling Firn Density through Spatially Varying Smoothed Arrhenius Regression

Scientists use firn (compacted snow) density models as a function of dep...
research
06/10/2022

Scalable Computations for Nonstationary Gaussian Processes

Nonstationary Gaussian process models can capture complex spatially vary...

Please sign up or login with your details

Forgot password? Click here to reset