LatticeVision: Image to Image Networks for Modeling Non-Stationary Spatial Data

arXiv stat.ML / 4/22/2026

💬 OpinionModels & Research

Key Points

  • The paper addresses parameter inference for parametric spatial statistical models when only a small ensemble of spatial random fields is available.
  • It argues that maximum likelihood estimation becomes computationally prohibitive for large, non-stationary spatial fields and motivates neural-network-based parameter estimation to bypass MLE.
  • Focusing on spatial autoregressive (SAR) models, the authors note that SAR parameters can be structured on a regular grid, allowing both inputs (fields) and outputs (parameters) to be treated as images.
  • Building on this, they show that image-to-image networks can estimate parameters faster and more accurately for non-stationary SAR models, achieving unprecedented modeling complexity.

Abstract

In many applications, we wish to fit a parametric statistical model to a small ensemble of spatially distributed random variables ('fields'). However, parameter inference using maximum likelihood estimation (MLE) is computationally prohibitive, especially for large, non-stationary fields. Thus, many recent works train neural networks to estimate parameters given spatial fields as input, sidestepping MLE completely. In this work we focus on a popular class of parametric, spatially autoregressive (SAR) models. We make a simple yet impactful observation; because the SAR parameters can be arranged on a regular grid, both inputs (spatial fields) and outputs (model parameters) can be viewed as images. Using this insight, we demonstrate that image-to-image (I2I) networks enable faster and more accurate parameter estimation for a class of non-stationary SAR models with unprecedented complexity.