Bayesian Levy-Dynamic Spatio-Temporal Process: Towards Big Data Analysis
Sourabh Bhattacharya

TL;DR
This paper introduces a Bayesian Levy-dynamic spatio-temporal model designed for big data analysis, featuring nonstationarity, nonseparability, and efficient parallel MCMC inference, demonstrated on large-scale sea surface temperature data.
Contribution
It presents a novel Bayesian nonparametric Levy-dynamic model with scalable inference methods suitable for large and complex spatio-temporal datasets.
Findings
Encouraging simulation results demonstrate the model's effectiveness.
Successful application to large sea surface temperature data.
Parallel MCMC efficiently handles high-dimensional data.
Abstract
In this era of big data, all scientific disciplines are evolving fast to cope up with the enormity of the available information. So is statistics, the queen of science. Big data are particularly relevant to spatio-temporal statistics, thanks to much-improved technology in satellite based remote sensing and Geographical Information Systems. However, none of the existing approaches seem to meet the simultaneous demand of reality emulation and cheap computation. In this article, with the Levy random fields as the starting point, e construct a new Bayesian nonparametric, nonstationary and nonseparable dynamic spatio-temporal model with the additional realistic property that the lagged spatio-temporal correlations converge to zero as the lag tends to infinity. Although our Bayesian model seems to be intricately structured and is variable-dimensional with respect to each time index, we are…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Soil Geostatistics and Mapping · Financial Risk and Volatility Modeling
