Graph‐based mutually exciting point processes for modelling event times in docked bike‐sharing systems

Author:

Sanna Passino Francesco1ORCID,Che Yining1,Cardoso Correia Perello Carlos1

Affiliation:

1. Department of Mathematics Imperial College London London UK

Abstract

AbstractThis paper introduces graph‐based mutually exciting processes (GB‐MEP) to model event times in network point processes, focusing on an application to docked bike‐sharing systems. GB‐MEP incorporates known relationships between nodes in a graph within the intensity function of a node‐based multivariate Hawkes process. This approach reduces the number of parameters to a quantity proportional to the number of nodes in the network, resulting in significant advantages for computational scalability when compared with traditional methods. The model is applied on event data observed on the Santander Cycles network in central London, demonstrating that exploiting network‐wide information related to geographical location of the stations is beneficial to improve the performance of node‐based models for applications in bike‐sharing systems. The proposed GB‐MEP framework is more generally applicable to any network point process where a distance function between nodes is available, demonstrating wider applicability.

Publisher

Wiley

Reference34 articles.

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