Author_Institution :
Lab. de Stat., Univ. de Paris-Sud, Orsay, France
Abstract :
For branching processes with immigration, we propose an approach which allows us to consistently estimate the means m, λ, and the variances σ2, b2 of the offspring and immigration distributions, respectively. Generally, statistical results for branching processes are established under the well-known trichotomy m<1, m=1, and m>1. For example, no parameters of the immigration distribution can be consistently estimated if m>1. The purpose of the paper is to obtain, through the introduction of a suitable adaptive control, strongly consistent estimators for all the parameters m, λ, σ2, and b2 without any restriction on the range of m. Central limit theorems and laws of iterated logarithm are also provided
Keywords :
adaptive control; parameter estimation; tracking; branching processes; central limit theorems; immigration distributions; laws of iterated logarithm; offspring; strongly consistent estimators; weighted estimation; Adaptive control; Centralized control; Filtration; Helium; Least squares approximation; Process control; Random variables; Trajectory;