Classifying Location Points as Daily Activities using Simultaneously Optimized DBSCAN-TE Parameters.

machine learning
emerging data
Findings
Authors

Greg Macfarlane

Gillian Riches

Emily Youngs

Jared Nielsen

Published

April 5, 2024

Citation

Macfarlane, G.S., Riches, G., Youngs, E.K., Nielsen, J.A. (2024). Classifying location points as daily activities using simultaneously optimized DBSCAN-TE parameters. . https://doi.org/10.32866/001c.116197

Location-based services data collected from mobile phones represent a potentially powerful source of travel behavior data, but transforming the location points into semantic activities – where and when activities occurred – is non-trivial. Existing algorithms to label activities require multiple parameters calibrated to a particular dataset. In this research, we apply a simulated annealing optimization procedure to identify the values of four parameters used in a density-based spatial clustering with additional noise and time entropy (DBSCAN-TE) algorithm. We develop a spatial accuracy scoring function to use in the calibration methodology and identify paths for future research.

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