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Cognitive Cost in Route Choice with Real-Time Information: An Exploratory Analysis

机译:具有实时信息的路由选择中的认知成本:探索性分析

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Real-time traffic information is increasingly available to support route choice decisions by reducing the travel time uncertainty. However it is likely that a traveler cannot assess all available information on all alternative routes due to time constraints and limited cognitive capacity. This paper presents a model that is consistent with a general network topology and can potentially be estimated based on revealed preference data. It explicitly takes into account the information acquisition and the subsequent path choice. The decision to acquire information is assumed to be based on the cognitive cost involved in the search and the expected benefit defined as the expected increase in utility after the search. A latent class model is proposed, where the decision to search or not to search and the depth of the search are latent and only the final path choices are observed. A synthetic data set is used for the purpose of validation and ease of illustration. The data are generated from the postulated cognitive-cost model, and estimation results show that the true values of the parameters can be recovered with enough variability in the data. Two other models with simplifying assumptions of no information and full information are also estimated with the same set of data with significantly biased path choice utility parameters. Prediction results show that a smaller cognitive cost encourages information search on risky and fast routes and thus higher shares on those routes. As a result, the expected average travel time decreases and the variability increases. The no-information and full-information models are extreme cases of the more general cognitive-cost model in some cases, but not generally so, and thus the increasing ease of information acquisition does not necessarily warrant a fullinformation model.
机译:通过减少旅行时间不确定性,实时交通信息越来越多地可用于支持路由选择决策。然而,由于时间限制和有限的认知能力,旅行者可能无法评估所有替代路线的所有可用信息。本文提出了一种与一般网络拓扑一致的模型,并且可以基于透露的偏好数据估计。它明确地考虑到信息采集和后续路径选择。获取信息的决定是基于搜索中所涉及的认知成本,并且在搜索后的公用事业中预期的预期益处。提出了一种潜在的类模型,其中搜索或不搜索和搜索的深度是潜伏的,并且仅观察到最终的路径选择。合成数据集用于验证和易于说明的目的。数据来自假设认知成本模型,估计结果表明,可以在数据中以足够的可变性恢复参数的真实值。还使用与具有显着偏置路径选择公用事业参数的相同一组数据来估计具有简化信息和完整信息的假设的其他两个模型。预测结果表明,较小的认知成本鼓励信息搜索风险和快速路线,从而在这些路线上的份额更高。结果,预期的平均行程时间降低,可变性增加。在某些情况下,无信息和全信息模型是更通用的认知成本模型的极端情况,但通常是如此,因此信息采集的增加不一定是保证全部信息模型。

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