Nonparametric Bayesian estimation for multivariate Hawkes processes
This paper studies nonparametric estimation of parameters of multivariate Hawkes processes. We consider the Bayesian setting and derive posterior concentration rates. First, rates are derived for L1-metrics for stochastic intensities of the Hawkes process. We then deduce rates for the L1-norm of int...
Main Authors: | , , |
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Format: | Journal article |
Language: | English |
Published: |
Institute of Mathematical Statistics
2020
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Summary: | This paper studies nonparametric estimation of parameters of multivariate Hawkes processes. We consider the Bayesian setting and derive posterior concentration rates. First, rates are derived for L1-metrics for stochastic intensities of the Hawkes process. We then deduce rates for the L1-norm of interactions functions of the process. Our results are exemplified by using priors based on piecewise constant functions, with regular or random partitions and priors based on mixtures of Betas distributions. We also present a simulation study to illustrate our results and to study empirically the inference on functional connectivity graphs of neurons. |
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