Abstract
We propose in this work an original estimator of the conditional intensity of a marker-dependent counting process, that is, a counting process with covariates. We use model selection methods and provide a nonasymptotic bound for the risk of our estimator on a compact set. We show that our estimator reaches automatically a convergence rate over a functional class with a given (unknown) anisotropic regularity. Then, we prove a lower bound which establishes that this rate is optimal. Lastly, we provide a short illustration of the way the estimator works in the context of conditional hazard estimation. © 2011 Association des Publications de l'Institut Henri Poincaŕ.
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Comte, F., Gaï Ffas, S., & Guilloux, A. (2011). Adaptive estimation of the conditional intensity of marker-dependent counting processes. Annales de l’institut Henri Poincare (B) Probability and Statistics, 47(4), 1171–1196. https://doi.org/10.1214/10-AIHP386
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