Inferring Socioeconomic Characteristics from Travel Patterns

IF 0.5 Q4 REGIONAL & URBAN PLANNING
A. Bakhtiari, Hamid Mirzahossein, N. Kalantari, Xia Jin
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引用次数: 0

Abstract

Nowadays, crowd-based big data is widely used in transportation planning. These data sources provide valuable information for model validation; however, they cannot be used to estimate travel demand forecasting models, because these models need a linkage between travel patterns and the socioeconomic characteristics of the people making trips and such a connection is not available due to privacy issues. As such, uncovering the correlation between travel patterns and socioeconomic characteristics is crucial for travel demand modelers to be able to leverage such data in model estimation. Different age, gender, and income groups may have specific travel behavior preferences. To extract and investigate these patterns, we used two data sets: one from the National Household Travel Survey 2009 and the other from the Metropolitan Washington Council of Government Transportation Planning Board 2007-2008 household survey. After preprocessing the data, a range of machine learning algorithms were used to synthesize the socioeconomic characteristics of travelers. After comparison, we found that the CatBoost model outperformed the other models. To further improve the results, a synthetic population and Bayesian updating were used, which considerably improved the estimation of income. This study showed that the conventional inference of travel demand from socioeconomic patterns can be reversed, creating an opportunity to utilize the plethora of crowd-based mobility data.
从旅游模式推断社会经济特征
如今,基于人群的大数据被广泛应用于交通规划。这些数据源为模型验证提供了有价值的信息;然而,它们不能用于估计旅行需求预测模型,因为这些模型需要在旅行模式和旅行者的社会经济特征之间建立联系,而由于隐私问题,这种联系是不可用的。因此,揭示旅行模式和社会经济特征之间的相关性对于旅行需求建模者能够在模型估计中利用这些数据至关重要。不同的年龄、性别和收入群体可能有特定的旅行行为偏好。为了提取和研究这些模式,我们使用了两组数据:一组来自2009年全国家庭旅行调查,另一组来自2007-2008年华盛顿大都会政府交通规划委员会家庭调查。在对数据进行预处理后,使用一系列机器学习算法来综合旅行者的社会经济特征。经过比较,我们发现CatBoost模型的性能优于其他模型。为了进一步改善结果,使用了合成总体和贝叶斯更新,这大大提高了收入的估计。这项研究表明,传统的基于社会经济模式的出行需求推断是可以逆转的,这为利用大量基于人群的出行数据创造了机会。
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来源期刊
Journal of Regional and City Planning
Journal of Regional and City Planning REGIONAL & URBAN PLANNING-
CiteScore
1.50
自引率
0.00%
发文量
16
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