Logo do repositório
 
Miniatura indisponível
Publicação

Joint bottom-up method for probabilistic forecasting of hierarchical time series

Utilize este identificador para referenciar este registo.
Nome:Descrição:Tamanho:Formato: 
113396354.pdf2.99 MBAdobe PDF Ver/Abrir

Orientador(es)

Resumo(s)

Many domains involve a hierarchy of time series, where the granular bottom-level series sum to upper-level series based on geography, product category, temporal granularity, or other features. Decision making in these domains requires forecasts that are accurate, probabilistic, and coherent in the sense of respecting the summing structure. In this paper, we first show that accurate and coherent probabilistic forecasts for all series in the hierarchy can be obtained by focusing on a joint model of the bottom-level series. Based on this result, we devise a Bayesian method that models the bottom-level series jointly, takes into account their contemporaneous and lagged dependence, and outputs a coherent probabilistic forecast of all series in the hierarchy. For empirical validation, we compare our method against many state-of-the-art techniques on data on Australian domestic tourism and product sales at Walmart. On each data set, our method outperforms its competition in terms of prediction accuracy. To conclude, we demonstrate how our method can support decisions in inventory management of multiple Walmart products.

Descrição

Palavras-chave

Bayesian statistics Dimensionality reduction Multivariate autoregressive models Probabilistic forecasting Spike-and-slab

Contexto Educativo

Citação

Projetos de investigação

Unidades organizacionais

Fascículo