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Measuring traffic congestion: An approach based on learning weighted inequality, spread and aggregation indices from comparison data

机译:测量交通拥堵:一种基于学习加权不等式的方法,从比较数据中传播和聚合指数

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摘要

As cities increase in size, governments and councils face the problem of designing infrastructure and approaches to traffic management that alleviate congestion. The problem of objectively measuring congestion involves taking into account not only the volume of traffic moving throughout a network, but also the inequality or spread of this traffic over major and minor intersections. For modeling such data, we investigate the use of weighted congestion indices based on various aggregation and spread functions. We formulate the weight learning problem for comparison data and use real traffic data obtained from a medium-sized Australian city to evaluate their usefulness. (C) 2017 Elsevier B.V. All rights reserved.
机译:随着城市规模的增加,政府和委员会面临着设计基础设施的问题,以及减轻拥堵的交通管理的方法。 客观测量拥塞的问题涉及不仅考虑到整个网络的交通量,而且考虑到在整个网络中移动的交通量,还要考虑到这种交通的不平等或传播在主要和次要交叉路口上。 为了对此类数据进行建模,我们根据各种聚合和扩展功能调查使用加权拥塞指数。 我们制定对比较数据的重量学习问题,并使用从中型澳大利亚城市获得的真实交通数据来评估它们的实用性。 (c)2017 Elsevier B.v.保留所有权利。

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