Compartir
Título
Forecasting using dynamic factor models with cluster structure at Barcelona subway stations
Autor(es)
Palabras clave
Time series
Forecasting
Dynamic factor models
Dependency measures
Public transport
Fecha de publicación
2022-12-01
Editor
Taylor and Francis Group
Citación
Mariñas-Collado, I., Sipols, A. E., Santos-Martín, M. T., & Frutos-Bernal, E. (2022). Forecasting using dynamic factor models with cluster structure at Barcelona subway stations. Transportation Planning and Technology, 45(8), 671–685. https://doi.org/10.1080/03081060.2022.2142588
Resumen
[EN]Dynamic factor models are a powerful technique for analysing vast volumes of data, more precisely, time series. However, the large volumes of data that come from public transport networks tend to have heterogeneity and a cluster structure. In this paper, Dynamic Factor Models with Cluster Structure (DFMCS) are used to forecast hourly entrances in the different stations of the Barcelona subway network. The main and most novel contribution lies in the use of clustering techniques to make an initial grouping of the behaviour of the elements belonging to the time series, in order to subsequently be able to predict future patterns.
URI
ISSN
1029-0354
DOI
10.1080/03081060.2022.2142588
Versión del editor
Aparece en las colecciones
Ficheros en el ítem
Nombre:
2022-ForecastingusingdynamicfactormodelswithclusterstructureatBarcelonasubwaystations.pdfEmbargado hasta: 2029-09-09
Tamaño:
2.957Mb
Formato:
Adobe PDF












