Using 5243 housing price observations during 1984-92 from Baton Rouge, this
manuscript demonstrates the substantial benefits obtained by modeling the
spatial as well as the temporal dependence of the errors. Specifically, the
spatial-temporal autoregression with 14 variables produced 46.9% less SSE
than a 12-variable regression using simple indicator variables for time. Mo
re impressively, the spatial-temporal regression with 14 variables displaye
d 8% lower SSE than a regression using 211 variables attempting to control
for the housing characteristics, time, and space via continuous and indicat
or variables. One-step ahead forecasts document the utility of the proposed
spatial-temporal model. In addition, the manuscript illustrates techniques
for rapidly computing the estimates based upon an interesting decompositio
n for modeling spatial and temporal effects. The decomposition maximizes th
e use of sparsity in some of the matrices and consequently accelerates comp
utations. In fact, the model uses the frequent transactions in the housing
market to help simplify computations. The techniques employed also have app
lications to other dimensions and metrics. (C) 2000 Elsevier Science BN. Al
l rights reserved.