Detalhes do Documento

Bayesian Modelling of Time Series of Counts with Missing Data

Autor(es): Silva, Isabel ; Silva, Maria Eduarda ; Pereira, I

Data: 2025

Identificador Persistente: https://hdl.handle.net/10216/165042

Origem: Repositório Aberto da Universidade do Porto


Descrição

The presence of missing data poses a common challenge for time series analysis in general since the most usual requirement is that the data is equally spaced in time and therefore imputation methods are required. For time series of counts, the usual imputation methods which usually produce real valued observations, are not adequate. This work employs Bayesian principles for handling missing data within time series of counts, based on first-order integer-valued autoregressive (INAR) models, namely Approximate Bayesian Computation (ABC) and Gibbs sampler with Data Augmentation (GDA) algorithms. The methodologies are illustrated with synthetic and real data and the results indicate that the estimates are consistent and present less bias when the percentage of missing observations decreases, as expected. (c) The Author(s), under exclusive license to Springer Nature Switzerland AG 2025.

Tipo de Documento Livro
Idioma Inglês
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