Mathematics (Jul 2021)

Revealing Driver’s Natural Behavior—A GUHA Data Mining Approach

  • Esko Turunen,
  • Klara Dolos

DOI
https://doi.org/10.3390/math9151818
Journal volume & issue
Vol. 9, no. 15
p. 1818

Abstract

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We investigate the applicability and usefulness of the GUHA data mining method and its computer implementation LISp-Miner for driver characterization based on digital vehicle data on gas pedal position, vehicle speed, and others. Three analytical questions are assessed: (1) Which measured features, also called attributes, distinguish each driver from all other drivers? (2) Comparing one driver separately in pairs with each of the other drivers, which are the most distinguishing attributes? (3) Comparing one driver separately in pairs with each of the other drivers, which attributes values show significant differences between drivers? The analyzed data consist of 94,380 measurements and contain clear and understandable patterns to be found by LISp-Miner. In conclusion, we find that the GUHA method is well suited for such tasks.

Keywords