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Bayesian estimation of multinomial probit models of work trip choice

机译:出差选择的多项概率模型的贝叶斯估计

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摘要

In this paper, we estimate a multinomial probit model of work trip mode choice in Seoul, Korea, using the Bayesian approach with Gibbs sampling. This method constructs a Markov chain Gibbs sampler that can be used to draw directly from the exact posterior distribution and perform finite sample likelihood inference. We estimate direct and cross-elasticities with respect to travel cost and the value of time. Our results show that travel demands are more sensitive to travel time than travel cost. The cross-elasticity results show that the bus has a greater substitute relation to the subway than the auto (and vice versa) and that an increase in the cost of an auto will increase the demand for bus transport more so than that of the subway.
机译:在本文中,我们使用Gibbs抽样的贝叶斯方法估计了韩国首尔工作旅行模式选择的多项式概率模型。该方法构造了一个马尔可夫链吉布斯采样器,可用于直接从精确的后验分布中提取并执行有限的样本似然推断。我们估计旅行成本和时间价值的直接和交叉弹性。我们的结果表明,出差需求对出差时间比出差成本更敏感。交叉弹性结果表明,公共汽车对地铁的替代关系要比汽车多(反之亦然),并且汽车成本的增加将比公共汽车对公交的需求增加更多。

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