Bayesian modeling and clustering for spatio-temporal areal data: an application to Italian unemployment

06/21/2022
by   Alexander Mozdzen, et al.
0

Spatio-temporal areal data can be seen as a collection of time series which are spatially correlated according to a specific neighboring structure. Incorporating the temporal and spatial dimension into a statistical model poses challenges regarding the underlying theoretical framework as well as the implementation of efficient computational methods. We propose to include spatio-temporal random effects using a conditional autoregressive prior, where the temporal correlation is modeled through an autoregressive mean decomposition and the spatial correlation by the precision matrix inheriting the neighboring structure. Their joint distribution constitutes a Gaussian Markov Random Field, whose sparse precision matrix enables the usage of efficient sampling algorithms. We cluster the areal units using a nonparametric prior, thereby learning latent partitions of the areal units. The performance of the model is assessed via an application to study regional unemployment patterns in Italy. When compared to other spatial and spatio-temporal competitors, our model shows more precise estimates and the additional information obtained from the clustering allows for an extended economic interpretation of the unemployment rates of the Italian provinces.

READ FULL TEXT

page 4

page 5

page 9

page 12

page 13

page 14

research
07/03/2021

Clustering of Time Series Data with Prior Geographical Information

Time Series data are broadly studied in various domains of transportatio...
research
06/11/2021

A Bayesian spatio-temporal error correction analysis of markets during the Finnish 1860s famine

We present a Bayesian spatio-temporal error correction model and use it ...
research
09/22/2017

STAR: Spatio-Temporal Altimeter Waveform Retracking using Sparse Representation and Conditional Random Fields

Satellite radar altimetry is one of the most powerful techniques for mea...
research
04/06/2023

A Socio-Demographic Latent Space Approach to Spatial Data When Geography is Important but Not All-Important

Many models for spatial and spatio-temporal data assume that "near thing...
research
10/24/2018

Statistical modeling of rates and trends in Holocene relative sea level

Characterizing the spatio-temporal variability of relative sea level (RS...
research
04/18/2019

Modelling antimicrobial prescriptions in Scotland: A spatio-temporal clustering approach

In 2016 the British government acknowledged the importance of reducing a...
research
08/05/2021

Sparse Generalized Yule-Walker Estimation for Large Spatio-temporal Autoregressions with an Application to NO2 Satellite Data

We consider sparse estimation of a class of high-dimensional spatio-temp...

Please sign up or login with your details

Forgot password? Click here to reset