DIFM - Dynamic ICAR Spatiotemporal Factor Models
Bayesian factor models are effective tools for dimension
reduction. This is especially applicable to multivariate
large-scale datasets. It allows researchers to understand the
latent factors of the data which are the linear or non-linear
combination of the variables. Dynamic Intrinsic Conditional
Autocorrelative Priors (ICAR) Spatiotemporal Factor Models
'DIFM' package provides function to run Markov Chain Monte
Carlo (MCMC), evaluation methods and visual plots from Shin and
Ferreira (2023)<doi:10.1016/j.spasta.2023.100763>. Our method
is a class of Bayesian factor model which can account for
spatial and temporal correlations. By incorporating these
correlations, the model can capture specific behaviors and
provide predictions.