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Identifiability of interaction kernels in mean-field equations of interacting particles

Abstract

This study examines the identifiability of interaction kernels in mean-field equations of interacting particles or agents, an area of growing interest across various scientific and engineering fields. The main focus is identifying data-dependent function spaces where a quadratic loss functional possesses a unique minimizer. We consider two data-adaptive L2L^2 spaces: one weighted by a data-adaptive measure and the other using the Lebesgue measure. In each L2L^2 space, we show that the function space of identifiability is the closure of the RKHS associated with the integral operator of inversion. Alongside prior research, our study completes a full characterization of identifiability in interacting particle systems with either finite or infinite particles, highlighting critical differences between these two settings. Moreover, the identifiability analysis has important implications for computational practice. It shows that the inverse problem is ill-posed, necessitating regularization. Our numerical demonstrations show that the weighted L2L^2 space is preferable over the unweighted L2L^2 space, as it yields more accurate regularized estimators.

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