Predicting mode choice through multivariate recursive partitioning.

Auteur(s)
Karlaftis, M.G.
Jaar
Samenvatting

Understanding and predicting individual mode choice decisions can help address issues ranging from forecasting demand for new modes of transport to understanding the underlying traveller behaviour and characteristics. Early research in mode choice modelling revolved, almost exclusively, around the family of logit models. But, a number of researchers have recently argued that these models place such restrictions on their parameters that compromise their performance and have thus experimented with a number of flexible and newly developed mathematical techniques. The present paper extends prior research by developing a methodology for predicting individual mode choice based on a nonparametric classification methodology that imposes very few constraining assumptions in yielding mode choice predictions. Preliminary results, using data from three different areas of the world, are promising especially when considering that the models are successful while using only a limited number of independent variables to achieve these predictions.

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Publicatie

Bibliotheeknummer
C 23242 (In: C 23184 CD-ROM) /72 / ITRD E115361
Uitgave

In: Proceedings of the AET European Transport Conference, Homerton College, Cambridge, 10-12 September 2001, 15 p., 26 ref.

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