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An estimation procedure for the Hawkes process

Abstract

In this paper, we present a nonparametric estimation procedure for the multivariate Hawkes point process. The timeline is cut into bins and -- for each component process -- the number of points in each bin is counted. The distribution of the resulting "bin-count sequences" can be approximated by an integer-valued autoregressive model known as the (multivariate) INAR(pp) model. We represent the INAR(pp) model as a standard vector-valued linear autoregressive time series with white-noise innovations (VAR(pp)). We establish consistency and asymptotic normality for conditional least-squares estimation of the VAR(pp), respectively, the INAR(pp) model. After an appropriate scaling, these time series estimates yield estimates for the underlying multivariate Hawkes process as well as formulas for their asymptotic distribution. All results are presented in such a way that computer implementation, e.g., in R, is straightforward. Simulation studies confirm the effectiveness of our estimation procedure. Finally, we present a data example where the method is applied to bivariate event-streams in financial limit-order-book data. We fit a bivariate Hawkes model on the joint process of limit and market order arrivals. The analysis exhibits a remarkably asymmetric relation between the two component processes: incoming market orders excite the limit order flow heavily whereas the market order flow is hardly affected by incoming limit orders.

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