Estimation for the Prediction of Point Processes with Many Covariates. / Sancetta, Alessio.

In: Econometric Theory, Vol. 34, No. 3, 06.2018, p. 598-627.

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Abstract

Estimation of the intensity of a point process is considered within a nonparametric framework. The intensity measure is unknown and depends on covariates, possibly many more than the observed number of jumps. Only a single trajectory of the counting process is observed. Interest lies in estimating the intensity conditional on the covariates. The impact of the covariates is modelled by an additive model where each component can be written as a linear combination of possibly unknown functions. The focus is on prediction as opposed to variable screening. Conditions are imposed on the coefficients of this linear combination in order to control the estimation error. The rates of convergence are optimal when the number of active covariates is large. As an application, the intensity of the buy and sell trades of the New Zealand Dollar futures is estimated and a test for forecast evaluation is presented. A simulation is included to provide some finite sample intuition on the model and asymptotic properties.
Original languageEnglish
Pages (from-to)598-627
Number of pages30
JournalEconometric Theory
Volume34
Issue number3
Early online date24 Apr 2017
DOIs
Publication statusPublished - Jun 2018
This open access research output is licenced under a Creative Commons Attribution-NonCommercial-NoDerivs 3.0 Unported License.

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