Dynamic Weights in Gaussian Mixture Models: A Bayesian Approach Michel H. Montoril * Department of Statistics, Federal University of S˜ao Carlos, Brazil and Leandro T. Correia Department of Statistics, University of Bras´ ılia, Brazil and Helio S. Migon † Federal University of Rio Janeiro, Brazil October 25, 2021 Abstract This paper proposes a generalization of Gaussian mixture models, where the mixture weight is allowed to behave as an unknown function of time. This model is capable of successfully capturing the features of the data, as demonstrated by simulated and real datasets. It can be useful in studies such as clustering, change-point and process control. In order to estimate the mixture weight function, we propose two new Bayesian nonlinear dynamic approaches for polynomial models, that can be extended to other problems involving polynomial nonlinear dynamic models. One of the methods, called here component-wise Metropolis-Hastings, apply the Metropolis-Hastings algorithm to each local level component of the state equation. It is more general and can be used in any situation where the observation and state equations are nonlinearly connected. The other method tends to be faster, but is applied specifically to binary data (using the probit link function). The performance of these methods of estimation, in the context of the proposed dynamic Gaussian mixture model, is evaluated through simulated datasets. Also, an application to an array Comparative Genomic Hybridization (aCGH) dataset from glioblastoma cancer illustrates our proposal, highlighting the ability of the method to detect chromosome aberrations. Keywords: change-point, classification, cluster, dynamic models, mixture problem, regime switch- ing, state-space models * corresponding author: michel@ufscar.br † Visiting professor at IMECC / Unicamp 1 arXiv:2104.03395v4 [stat.ME] 22 Oct 2021