Modeling US housing prices by spatial dynamic structural equation models
Pasquale Valentini, Luigi Ippoliti, Lara Fontanella

TL;DR
This paper introduces a spatial dynamic structural equation model for analyzing US housing prices at the state level, incorporating spatially structured factors and Bayesian inference to identify regional similarities and analyze macroeconomic influences.
Contribution
It extends dynamic factor models to multivariate lattice data with spatially structured loadings, enabling regional similarity detection and comprehensive Bayesian analysis.
Findings
Identified regional clusters sharing common housing price dynamics.
Modeled the influence of macroeconomic variables on housing prices.
Demonstrated the model's effectiveness on US state-level data.
Abstract
This article proposes a spatial dynamic structural equation model for the analysis of housing prices at the State level in the USA. The study contributes to the existing literature by extending the use of dynamic factor models to the econometric analysis of multivariate lattice data. One of the main advantages of our model formulation is that by modeling the spatial variation via spatially structured factor loadings, we entertain the possibility of identifying similarity "regions" that share common time series components. The factor loadings are modeled as conditionally independent multivariate Gaussian Markov Random Fields, while the common components are modeled by latent dynamic factors. The general model is proposed in a state-space formulation where both stationary and nonstationary autoregressive distributed-lag processes for the latent factors are considered. For the latent…
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