TY - JOUR
T1 - Transforming norm-based to graph-based spatial representation for spatio-temporal epidemiological models
AU - Lazebnik, Teddy
N1 - Publisher Copyright:
© 2025 The Author.
PY - 2026/2/15
Y1 - 2026/2/15
N2 - Pandemics, with their profound societal and economic impacts, pose significant threats to global health, mortality rates, economic stability, and political landscapes. In response to these challenges, numerous studies have employed spatio-temporal models to enhance our understanding and management of these complex phenomena. These spatio-temporal models can be roughly divided into two main spatial categories: norm-based and graph-based. Norm-based models are usually more accurate and easier to model, but are more computationally intensive and require more data to fit. On the other hand, graph-based models are less accurate and harder to model, but are less computationally intensive and require fewer data to fit. As such, ideally, one would like to use a graph-based model while preserving the representation accuracy obtained by the norm-based model. In this study, we explore the ability to transform from norm-based to graph-based spatial representation for these models. We first show that no analytical mapping between the two exists, requiring one to use numerical approximation methods instead. We introduce a novel framework for this task, together with twelve possible implementations using a wide range of heuristic optimization approaches. Our findings show that by leveraging agent-based simulations and heuristic algorithms for the graph node’s location and population’s spatial walk dynamics approximation, one can use graph-based spatial representation without losing much of the model’s accuracy and expressiveness. We investigate our framework for three real-world cases, achieving 93% accuracy preservation, on average, while obtaining 86% relative computational time reduction. Moreover, an analysis of synthetic cases shows the proposed framework is relatively robust for changes in both spatial and temporal properties.
AB - Pandemics, with their profound societal and economic impacts, pose significant threats to global health, mortality rates, economic stability, and political landscapes. In response to these challenges, numerous studies have employed spatio-temporal models to enhance our understanding and management of these complex phenomena. These spatio-temporal models can be roughly divided into two main spatial categories: norm-based and graph-based. Norm-based models are usually more accurate and easier to model, but are more computationally intensive and require more data to fit. On the other hand, graph-based models are less accurate and harder to model, but are less computationally intensive and require fewer data to fit. As such, ideally, one would like to use a graph-based model while preserving the representation accuracy obtained by the norm-based model. In this study, we explore the ability to transform from norm-based to graph-based spatial representation for these models. We first show that no analytical mapping between the two exists, requiring one to use numerical approximation methods instead. We introduce a novel framework for this task, together with twelve possible implementations using a wide range of heuristic optimization approaches. Our findings show that by leveraging agent-based simulations and heuristic algorithms for the graph node’s location and population’s spatial walk dynamics approximation, one can use graph-based spatial representation without losing much of the model’s accuracy and expressiveness. We investigate our framework for three real-world cases, achieving 93% accuracy preservation, on average, while obtaining 86% relative computational time reduction. Moreover, an analysis of synthetic cases shows the proposed framework is relatively robust for changes in both spatial and temporal properties.
KW - Agent-based simulation
KW - Computational epidemiology
KW - Heuristic optimization algorithms
KW - Machine learning
KW - Transformative algorithms
UR - https://www.scopus.com/pages/publications/105026093016
U2 - 10.1016/j.engappai.2025.113619
DO - 10.1016/j.engappai.2025.113619
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AN - SCOPUS:105026093016
SN - 0952-1976
VL - 166
JO - Engineering Applications of Artificial Intelligence
JF - Engineering Applications of Artificial Intelligence
M1 - 113619
ER -