Statistical Inference for Renewal Processes

Publisher: John Wiley & Sons Inc

E-ISSN: 1467-9469|45|1|164-193

ISSN: 0303-6898

Source: SCANDINAVIAN JOURNAL OF STATISTICS, Vol.45, Iss.1, 2018-03, pp. : 164-193

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Abstract

AbstractWe consider non‐parametric estimation for interarrival times density of a renewal process. For continuous time observation, a projection estimator in the orthonormal Laguerre basis is built. Nonstandard decompositions lead to bounds on the mean integrated squared error (MISE), from which rates of convergence on Sobolev–Laguerre spaces are deduced, when the length of the observation interval gets large. The more realistic setting of discrete time observation is more difficult to handle. A first strategy consists in neglecting the discretization error. A more precise strategy aims at taking into account the convolution structure of the data. Under a simplifying ‘dead‐zone’ condition, the corresponding MISE is given for any sampling step. In the three cases, an automatic model selection procedure is described and gives the best MISE, up to a logarithmic term. The results are illustrated through a simulation study.