Discovery of interaction and diffusion kernels in particle-to-mean-field multi-agent systems
arXiv cs.LG / 3/18/2026
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Key Points
- The paper proposes a data-driven framework to learn interaction and diffusion kernels in stochastic multi-agent systems directly from trajectory data without prior knowledge of the interaction structure.
- It formulates the inverse problem as a sequence of sparse regression tasks in structured finite-dimensional spaces spanned by compactly supported basis functions, addressing the challenge of partially observed pairwise interactions.
- It introduces two complementary identification strategies: a random-batch sampling method to preserve statistical dynamics in expectation and a mean-field approach that uses a reconstructed empirical density for continuous nonlocal regression.
- Numerical experiments on benchmark models, including bounded-confidence and attraction-repulsion dynamics, demonstrate accurate reconstruction of both interaction and diffusion kernels and comparable performance between the two strategies.
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