A Fast Algorithm for the Finite Expression Method in Learning Dynamics on Complex Networks
Zezheng Song, Chunmei Wang, Haizhao Yang

TL;DR
This paper introduces a fast algorithm for the Finite Expression Method (FEX) that efficiently learns complex network dynamics, enabling accurate modeling with reduced computational costs and minimal prior knowledge.
Contribution
The paper presents a novel, scalable FEX algorithm with a stochastic optimization approach that significantly reduces computational complexity for learning dynamics on complex networks.
Findings
FEX accurately identifies diverse network dynamics.
The fast algorithm reduces complexity from O(N^2) to O(N).
FEX outperforms existing methods in various network topologies.
Abstract
Complex network data is prevalent in various real-world domains, including physical, technological, and biological systems. Despite this prevalence, predicting trends and understanding behavioral patterns in complex systems remain challenging due to poorly understood underlying mechanisms. While data-driven methods have advanced in uncovering governing equations from time series data, efforts to extract physical laws from network data are limited and often struggle with incomplete or noisy data. Additionally, they suffer from computational costs on network data, making it difficult to scale to real-world networks. To address these challenges, we introduce a novel approach called the Finite Expression Method (FEX) and its fast algorithm for learning dynamics on complex networks. FEX represents dynamics on complex networks using binary trees composed of finite mathematical operators. The…
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Taxonomy
TopicsMental Health Research Topics · Gene Regulatory Network Analysis · Evolutionary Algorithms and Applications
