Prediction of commuters' daily time allocation

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Abstract

This paper presents a model system to predict the time allocation in commuters' daily activity-travel pattern. The departure time and the arrival time are estimated with Ordered Probit model and Support Vector Regression is introduced for travel time and activity duration prediction. Applied in a real-world time allocation prediction experiment, the model system shows a satisfactory level of prediction accuracy. This study provides useful insights into commuters' activity-travel time allocation decision by identifying the important influences, and the results are readily applied to a wide range of transportation practice, such as travel information system, by providing reliable forecast for variations in travel demand over time. By introducing the Support Vector Regression, it also makes a methodological contribution in enhancing prediction accuracy of travel time and activity duration prediction.

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CITATION STYLE

APA

Zong, F., Hongfei, J., Xiang, P., & Yang, W. (2013). Prediction of commuters’ daily time allocation. Promet - Traffic and Transportation, 25(5), 445–455. https://doi.org/10.7307/ptt.v25i5.1190

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