We consider the problem of tracking an unknown time varying parameter that characterizes the probabilistic evolution of a sequence of independent observations. To this aim, we propose a stochastic gradient descent-based recursive scheme in which the log-likelihood of the observations acts as time varying gain function. We prove convergence in mean-square error in a suitable neighbourhood of the unknown time varying parameter and illustrate the details of our findings in the case where data are generated from distributions belonging to the exponential family.
Lanconelli A., Lauria C.S.A. (2024). Maximum Likelihood With a Time Varying Parameter. STATISTICAL PAPERS, 65(4), 2555-2566 [10.1007/s00362-023-01497-y].
Maximum Likelihood With a Time Varying Parameter
Lanconelli A.
Primo
Investigation
;Lauria C. S. A.Secondo
Investigation
2024
Abstract
We consider the problem of tracking an unknown time varying parameter that characterizes the probabilistic evolution of a sequence of independent observations. To this aim, we propose a stochastic gradient descent-based recursive scheme in which the log-likelihood of the observations acts as time varying gain function. We prove convergence in mean-square error in a suitable neighbourhood of the unknown time varying parameter and illustrate the details of our findings in the case where data are generated from distributions belonging to the exponential family.File | Dimensione | Formato | |
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