Inference of interaction kernels in mean-field models of opinion dynamics
In models of opinion dynamics, many parameters – either in the form of constants or in the form of functions – play a critical role in describing, calibrating, and forecasting how opinions change with time. When examining a model of opinion dynamics, it is beneficial to infer its parameters using empirical data. In this paper, we study an example of such an inference problem. We consider a mean-field bounded-confidence model with an unknown interaction kernel between individuals. This interaction kernel encodes how individuals with different opinions interact and affect each other's opinions. It is often difficult to quantitatively measure social opinions as empirical data from observations or experiments, so we assume that the available data takes the form of partial observations of the cumulative distribution function of opinions. We prove that certain measurements guarantee a precise and unique inference of the interaction kernel and propose a numerical method to reconstruct an interaction kernel from a limited number of data points. Our numerical results suggest that the error of the inferred interaction kernel decays exponentially as we strategically enlarge the data set.
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