Supervised learning: Predicting passenger load in public transport

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Abstract

In this extended abstract, we show the supervised learning approach to
predicting passenger load of trams, based on historical passenger load patterns. We look at two different cases: predicting long-term passenger load of any given day and time, and predicting short-term passenger load at a particular public transport vehicle.
Original languageEnglish
Title of host publicationProceedings of Conference on Advanced Systems in Public Transport (CASPT) 2018
Subtitle of host publication23-25 July, Brisbane, Australia
Number of pages8
Publication statusPublished - 2018
EventCaspt 2018: 14th Conference on Advanced Systems in Public Transport and TransitData 2018 - Brisbane Convention and Exhibition Centre, Brisbane, Australia
Duration: 23 Jul 201825 Jul 2018
Conference number: 14

Conference

ConferenceCaspt 2018: 14th Conference on Advanced Systems in Public Transport and TransitData 2018
Abbreviated titleCASPT 2018
CountryAustralia
CityBrisbane
Period23/07/1825/07/18

Keywords

  • Public transport
  • Hubs
  • passenger load
  • supervised learning
  • prediction

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