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Measuring traffic congestion: an approach based on learning weighted inequality, spread and aggregation indices from comparison data
journal contribution
posted on 2018-06-01, 00:00 authored by Gleb BeliakovGleb Beliakov, Marek GagolewskiMarek Gagolewski, Simon JamesSimon James, Shannon Pace, Nicola PastorelloNicola Pastorello, Elodie Thilliez, Rajesh VasaRajesh VasaAs 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.
History
Journal
Applied soft computingVolume
67Pagination
910 - 919Publisher
Elsevier B.V.Location
Amsterdam, The NetherlandsPublisher DOI
ISSN
1568-4946Language
engPublication classification
C Journal article; C1 Refereed article in a scholarly journalCopyright notice
2017, Elsevier B.V.Usage metrics
Categories
Keywords
aggregation functionsinequality indicesspread measureslearning weightscongestiontraffic analysisScience & TechnologyTechnologyComputer Science, Artificial IntelligenceComputer Science, Interdisciplinary ApplicationsComputer SciencePREDICTIONDIVERSITYInformation SystemsArtificial Intelligence and Image Processing