Skip to content
Back Home
  • About
    • The mission
    • Contacts
    • People who are involved
    • External Advisory Board
  • News
  • Events
    • 10th SmartData@PoliTO Workshop – Present and Future Directions
    • 9th SmartData@PoliTO Workshop – SmartData@PoliTO meets AI-H@PoliTO
    • La biblioteca nel metaverso – la Reading & Machine
  • Workshops
    • Seminars
      • AI4Industry – the role of AI and Data-driven Analysis in the Future of European Industry
      • On the dynamics of music virality and its relation with mainstream success
      • Bypass frauds in cellular networks: from Financial strikes to Data poisoning
    • SmartTalks
  • Education
    • Courses for PhD students
    • PhD Course: Topological Data Analysis
    • PhD Course: Data Science for Networks
    • Corporate training on Digital Transformation
  • Research
    • Publications
    • Current PhD
    • Projects
    • Open Datasets & Libraries
    • Topics
  • Open Positions
    • open position – PhD student
    • open position – Assistant Professor with time contract (RTD-A)
    • open position – PostDoc researchers
    • Open position – Technologist
  • BigData Cluster
    • Computing Facilities
    • Request BigData@Polito Account
    • BigData@Polito Access Instructions
    • Run Jobs with Custom Packages
  • Private Area
  • Search
Back Home
  • About
    • The mission
    • Contacts
    • People who are involved
    • External Advisory Board
  • News
  • Events
    • 10th SmartData@PoliTO Workshop – Present and Future Directions
    • 9th SmartData@PoliTO Workshop – SmartData@PoliTO meets AI-H@PoliTO
    • La biblioteca nel metaverso – la Reading & Machine
  • Workshops
    • Seminars
      • AI4Industry – the role of AI and Data-driven Analysis in the Future of European Industry
      • On the dynamics of music virality and its relation with mainstream success
      • Bypass frauds in cellular networks: from Financial strikes to Data poisoning
    • SmartTalks
  • Education
    • Courses for PhD students
    • PhD Course: Topological Data Analysis
    • PhD Course: Data Science for Networks
    • Corporate training on Digital Transformation
  • Research
    • Publications
    • Current PhD
    • Projects
    • Open Datasets & Libraries
    • Topics
  • Open Positions
    • open position – PhD student
    • open position – Assistant Professor with time contract (RTD-A)
    • open position – PostDoc researchers
    • Open position – Technologist
  • BigData Cluster
    • Computing Facilities
    • Request BigData@Polito Account
    • BigData@Polito Access Instructions
    • Run Jobs with Custom Packages
  • Private Area
Home » Publications » Machine Learning Methods to Forecast Public Transport Demand Based on Smart Card Validations

Machine Learning Methods to Forecast Public Transport Demand Based on Smart Card Validations

Brunella Caroleo, Silvia Chiusano, Elena Daraio, Andrea Avignone, Eleonora Gastaldi, Mauro Paoletti, Maurizio Arnone (2023) Machine Learning Methods to Forecast Public Transport Demand Based on Smart Card Validations, In: Intelligent Transport Systems, pp. 194-209, ISBN: 978-3-031-49379-9

Post navigation

  • Previous post MED & Italian Energy Report 2023: Geopolitics of energy in the Mediterranean area between international crises and new energy commodities, Chapter 5: Electricity highways across the Mediterranean: a green connection between Northern and Southern Shore
  • Back to post list
  • Next post Virtual reality body swapping to improve self-assessment in job interview training

Collaborations

 

© 2025 SmartData@PoliTO – All rights reserved

Homepage - Privacy - Cookie Policy - Contacts