In today's world, bike sharing systems are becoming in- creasingly common in all main cities around the world. To understand the spatiotemporal patterns of how people move by bike through the city of Milan, we apply func- tional data analysis to study the flows of a bike sharing mobility network. We introduce a complete pipeline to properly analyse and model functional data through a con- current functional-on-functional model taking into account the effects of weather conditions and calendar on the bike flows. In the end, we develop an interactive interface to explore the results of the analyses.
Torti, A., Pini, A., Vantini, S., Modelling time‐varying mobility flows using function‐on‐function regression: analysis of a bike sharing system in the city of Milan, <<JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES C-APPLIED STATISTICS>>, 2020; (N/A): 1-22. [doi:10.1111/rssc.12456] [http://hdl.handle.net/10807/162951]
Modelling time‐varying mobility flows using function‐on‐function regression: analysis of a bike sharing system in the city of Milan
Pini, Alessia;
2020
Abstract
In today's world, bike sharing systems are becoming in- creasingly common in all main cities around the world. To understand the spatiotemporal patterns of how people move by bike through the city of Milan, we apply func- tional data analysis to study the flows of a bike sharing mobility network. We introduce a complete pipeline to properly analyse and model functional data through a con- current functional-on-functional model taking into account the effects of weather conditions and calendar on the bike flows. In the end, we develop an interactive interface to explore the results of the analyses.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.