ResearchTrend.AI
  • Papers
  • Communities
  • Events
  • Blog
  • Pricing
Papers
Communities
Social Events
Terms and Conditions
Pricing
Parameter LabParameter LabTwitterGitHubLinkedInBlueskyYoutube

© 2025 ResearchTrend.AI, All rights reserved.

  1. Home
  2. Papers
  3. 2411.07207
41
2

General Geospatial Inference with a Population Dynamics Foundation Model

11 November 2024
Mohit Agarwal
Mimi Sun
C. Kamath
Arbaaz Muslim
Prithul Sarker
Joydeep Paul
H. Yee
M. Sieniek
Kim Jablonski
Yael Mayer
David Fork
Sheila de Guia
Jamie McPike
Adam Boulanger
T. Shekel
David Schottlander
Yao Xiao
Manjit Chakravarthy Manukonda
Yun-hui Liu
Neslihan Bulut
Sami Abu-El-Haija
Arno Eigenwillig
Parth Kothari
Bryan Perozzi
Monica Bharel
Von Nguyen
Luke Barrington
Niv Efron
Yossi Matias
Greg C. Corrado
Krish Eswaran
Shruthi Prabhakara
    AI4CE
ArXivPDFHTML
Abstract

Supporting the health and well-being of dynamic populations around the world requires governmental agencies, organizations and researchers to understand and reason over complex relationships between human behavior and local contexts in order to identify high-risk groups and strategically allocate limited resources. Traditional approaches to these classes of problems often entail developing manually curated, task-specific features and models to represent human behavior and the natural and built environment, which can be challenging to adapt to new, or even, related tasks. To address this, we introduce a Population Dynamics Foundation Model (PDFM) that aims to capture the relationships between diverse data modalities and is applicable to a broad range of geospatial tasks. We first construct a geo-indexed dataset for postal codes and counties across the United States, capturing rich aggregated information on human behavior from maps, busyness, and aggregated search trends, and environmental factors such as weather and air quality. We then model this data and the complex relationships between locations using a graph neural network, producing embeddings that can be adapted to a wide range of downstream tasks using relatively simple models. We evaluate the effectiveness of our approach by benchmarking it on 27 downstream tasks spanning three distinct domains: health indicators, socioeconomic factors, and environmental measurements. The approach achieves state-of-the-art performance on all 27 geospatial interpolation tasks, and on 25 out of the 27 extrapolation and super-resolution tasks. We combined the PDFM with a state-of-the-art forecasting foundation model, TimesFM, to predict unemployment and poverty, achieving performance that surpasses fully supervised forecasting. The full set of embeddings and sample code are publicly available for researchers.

View on arXiv
Comments on this paper