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A2 Copula-Driven Spatial Bayesian Neural Network For Modeling Non-Gaussian Dependence: A Simulation Study

A2 Copula-Driven Spatial Bayesian Neural Network For Modeling Non-Gaussian Dependence: A Simulation Study

来源:Arxiv_logoArxiv
英文摘要

In this paper, we introduce the A2 Copula Spatial Bayesian Neural Network (A2-SBNN), a predictive spatial model designed to map coordinates to continuous fields while capturing both typical spatial patterns and extreme dependencies. By embedding the dual-tail novel Archimedean copula viz. A2 directly into the network's weight initialization, A2-SBNN naturally models complex spatial relationships, including rare co-movements in the data. The model is trained through a calibration-driven process combining Wasserstein loss, moment matching, and correlation penalties to refine predictions and manage uncertainty. Simulation results show that A2-SBNN consistently delivers high accuracy across a wide range of dependency strengths, offering a new, effective solution for spatial data modeling beyond traditional Gaussian-based approaches.

Agnideep Aich、Sameera Hewage、Md Monzur Murshed、Ashit Baran Aich、Amanda Mayeaux、Asim K. Dey、Kumer P. Das、Bruce Wade

计算技术、计算机技术

Agnideep Aich,Sameera Hewage,Md Monzur Murshed,Ashit Baran Aich,Amanda Mayeaux,Asim K. Dey,Kumer P. Das,Bruce Wade.A2 Copula-Driven Spatial Bayesian Neural Network For Modeling Non-Gaussian Dependence: A Simulation Study[EB/OL].(2025-05-29)[2025-06-17].https://arxiv.org/abs/2505.24006.点此复制

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