Regimes in socialcultural events-driven activity sequences: Modelling approach and empirical application.

Author(s)
Arentze, T. & Timmermans, H.
Year
Abstract

A Bayesian-network model was proposed to predict and analyse the factors that influence activity-travel sequences that are triggered by socialcultural events. The study is motivated by the intention to examine the wider context in which activity-travel decisions are made and to model such decisions under longitudinal time horizons. We assume that social events trigger a series of interrelated activities and corresponding trips. Data about events and related activities are collected using a month-diary and involving a large sample of households in the Eindhoven region, The Netherlands. A learning algorithm is applied to derive a Bayesian-network model from the event diary. The results show that indeed many travel choices are influenced by particular events, that these influences vary by socio-demographic variables and that the learned Bayesian-network model is able to represent these interdependencies among all these variables. We demonstrate how the model can be used to predict event-driven activity-travel sequences in a micro-simulation. (A) Reprinted with permission from Elsevier.

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Publication

Library number
I E141718 /72 / ITRD E141718
Source

Transportation Research, Part A. 2009 /05. 43(4) Pp311-322 (25 Refs.)

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