Welcome to ClientVPS Mirrors

README

Univariate and Multivariate Accelerated Spatial Modeling by Bayesian Predictive Stacking

This package provides the principal functions to perform accelerated modeling for univariate and multivariate spatial regressions. The package is used mostly within the novel working paper “Bayesian Transfer Learning for Artificially Intelligent Geospatial Systems: A Predictive Stacking Approach” (Luca Presicce and Sudipto Banerjee, 2024+)“. To guarantee the reproducibility of scientific results, in the Bayesian-Transfer-Learning-for-GeoAI repository are also available all the scripts of code used for simulations, data analysis, and results presented in the Manuscript and its Supplemental material.

## Roadmap
## Guided installation Since the package is not already available on CRAN (already submitted, and hopefully soon available), we use the devtools R package to install. Then, check for its presence on your device, otherwise install it: {r, echo = F, eval = F, collapse = TRUE} if (!require(devtools)) { install.packages("devtools", dependencies = TRUE) } Once you have installed devtools, we can proceed. Let’s install the spBPS package!

Contacts

Author Luca Presicce (l.presicce@campus.unimib.it) & Sudipto Banerjee (sudipto@ucla.edu)
Maintainer Luca Presicce (l.presicce@campus.unimib.it)
Reference Luca Presicce and Sudipto Banerjee (2024+) “Bayesian Transfer Learning for Artificially Intelligent Geospatial Systems: A Predictive Stacking Approach”

Need a high-speed mirror for your open-source project?
Contact our mirror admin team at info@clientvps.com.

This archive is provided as a free public service to the community.
Proudly supported by infrastructure from VPSPulse , RxServers , BuyNumber , UnitVPS , OffshoreName and secure payment technology by ArionPay.