Spatio-temporal mobility patterns are at the core of strategic applications such as urban planning and monitoring. Depending on the strength of spatio-temporal constraints, different mobility patterns can be defined. While existing approaches work well in the extraction of groups of objects sharing fine-grained paths, the huge volume of large-scale data asks for coarse-grained solutions. Colossal Trajectory Mining (CTM) efficiently extracts heterogeneous mobility patterns out of a multidimensional space that, along with space and time dimensions, can consider additional trajectory features (e.g., means of transport or activity) to characterize behavioral mobility patterns. The algorithm is natively designed in a distributed fashion, and the experimental evaluation shows its scalability with respect to the involved features and the cardinality of the trajectory dataset.

Forresi C., Francia M., Gallinucci E., Golfarelli M., Pasini M. (2024). Colossal Trajectory Mining Semantic Co-movement Pattern Mining.

Colossal Trajectory Mining Semantic Co-movement Pattern Mining

Forresi C.;Francia M.
;
Gallinucci E.;Golfarelli M.;Pasini M.
2024

Abstract

Spatio-temporal mobility patterns are at the core of strategic applications such as urban planning and monitoring. Depending on the strength of spatio-temporal constraints, different mobility patterns can be defined. While existing approaches work well in the extraction of groups of objects sharing fine-grained paths, the huge volume of large-scale data asks for coarse-grained solutions. Colossal Trajectory Mining (CTM) efficiently extracts heterogeneous mobility patterns out of a multidimensional space that, along with space and time dimensions, can consider additional trajectory features (e.g., means of transport or activity) to characterize behavioral mobility patterns. The algorithm is natively designed in a distributed fashion, and the experimental evaluation shows its scalability with respect to the involved features and the cardinality of the trajectory dataset.
2024
Proceedings of the 32nd Symposium of Advanced Database Systems
131
141
Forresi C., Francia M., Gallinucci E., Golfarelli M., Pasini M. (2024). Colossal Trajectory Mining Semantic Co-movement Pattern Mining.
Forresi C.; Francia M.; Gallinucci E.; Golfarelli M.; Pasini M.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/980341
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