Maximum likelihood estimation for stationary point processes

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Date

1986-02

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Proceedings of the National Academy of Sciences

Abstract

In this paper we derive the log likelihood function for point processes in terms of their stochastic intensities by using the martingale approach. For practical purposes we work with an approximate log likelihood function that is shown to possess the usual asymptotic properties of a log likelihood function. The resulting estimates are strongly consistent and asymptotically normal (under some regularity conditions). As a by-product, a strong law of large numbers and a central limit theorem for martingales in continuous times are derived.

Description

Publisher's, offprint version

Keywords

compensator, stochastic intensity, martingale, natural increasing process, point process, predictable process

Citation

Puri, M. L. "Maximum likelihood estimation for stationary point processes." Proceedings of the National Academy of Sciences (1986), U.S.A., Volume 83 Issue 3, 541–545. Co-author: Pham D. Tuan.

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Article