City-scalable Destination Recommender System for On-demand Senior Mobility

Overview

This project aims to improve the efficiency of mobility-on-demand services with the help of machine learning. The goal is to create an algorithm that public paratransit services, private rideshare companies, and future autonomous vehicle fleets could use to improve operations and lower costs.

The research is focused on embedding a type of algorithm called a recommender system – like the technology Amazon uses to suggest products, or that Netflix uses to recommend movies – into a mobility-on-demand service. A user could input the type of destination they’re looking for – like a movie theater, a type of restaurant, or grocery store – and the app would suggest specific places. The suggestions would balance the user’s preferences with the most efficient options for the service, improving efficiency, and reducing operating costs. 

Incorporating a recommender system into mobility-on-demand services has the potential to provide benefits for both the service providers and the users by:

  • Mitigating costs that arise due to unplanned disruptions or schedule cancellations by recommending alternative options close by.
  • Providing information to users who might have limited access to information, such as the elderly, about new establishments or establishments that are beyond their typical neighborhoods.
  • Learning from users’ feedback about destinations to provide improved recommendations in the future.

The project team is conducting computational experiments and constructing simulations to see how well this kind of recommender system can work in different city structures. The challenge of applying a recommender system to mobility services is that travel is highly contextual – the system has to take into account the origins, destinations, and preferences of multiple passengers to recommend a location that is cost-efficient for the service and satisfactory to the user. The researchers are investigating how difficult it is for these algorithms to learn efficiently given these variables and how dependent that efficiency is on land use and demand patterns in different cities. 

Project Media

Toronto establishment heatmap based on Yelp Open Data ratings

Las Vegas establishment heatmap based on Yelp Open Data ratings

Personnel

Joseph Chow

Deputy Director of the C2SMART center

Joseph Chow is a Principal Investigator on this project.

KELVIN CHEU

Professor at The University of Texas at El Paso

Kelvin Cheu is a Co-Principal Investigator on this project.

Assel Dmitriyeva

Technical Product Manager - Data Science at QOMPLX

Assel Dmitriyeva is a Graduate Research Assistant on this project.

Details