Participation in online activities while travelling: an application of the MDCEV model in the context of rail travel

被引:0
作者
Chiara Calastri
Jacek Pawlak
Richard Batley
机构
[1] University of Leeds,Institute for Transport Studies
[2] Imperial College London,Urban Systems Lab and Centre for Transport Studies
来源
Transportation | 2022年 / 49卷
关键词
Travel time; Travel-based multitasking; Time use; MDCEV; ICT; Value of travel time; Productivity; Online work;
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中图分类号
学科分类号
摘要
Travel-based multitasking, i.e. using travel time to conduct enjoyable and/or productive activities, is the subject of an increasing number of theoretical and empirical studies. Most existing studies focus on modelling the choice of which activities people conduct while travelling, and a limited number of papers also focuses on their duration. The novelty of this study with respect to this literature is two-fold. Firstly, we specifically study the engagement in different online activities while travelling, and apply the state-of-the-art Multiple Discrete-Continuous Extreme Value (MDCEV) model to jointly model the choice and duration of multiple activities. We apply this model to data collected face-to-face from train passengers in the UK. We find that activity choice and duration is explained by both passenger and trip characteristics, especially trip purpose, ticket type and day/time of the trip. Secondly, we show how such modelling can assist in investment appraisal, in particular by providing insights into lower- and upper- bound estimates of the proportion of the entire travel time spent working, itself of importance in, for example, valuation of business travel time using the so-called Hensher Equation. We present a detailed discussion of how the findings from our work contribute to the broader discourse around the nature of travel time and its valuation.
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页码:61 / 87
页数:26
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