We describe a (nonparametric) prediction algorithm for spatial data, based on a canonical factorization of the spectral density function. We provide theoretical results showing that the predictor has desirable asymptotic properties. Finite sample performance is assessed in a Monte Carlo study that also compares our algorithm to a rival nonparametric method based on the infinite representation of the dynamics of the data. Finally, we apply our methodology to predict house prices in Los Angeles.
CITATION STYLE
Gupta, A., & Hidalgo, J. (2023). NONPARAMETRIC PREDICTION WITH SPATIAL DATA. Econometric Theory, 39(5), 950–988. https://doi.org/10.1017/S0266466622000226
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