Zone pAth Construction (ZAC) based Approaches for Effective Real-Time Ridesharing
Meghna Lowalekar, Pradeep Varakantham, Patrick Jaillet

TL;DR
This paper introduces zone path construction (ZAC) approaches for real-time ridesharing, enabling more relevant request combinations and improved efficiency over existing heuristics by using zone abstractions.
Contribution
The paper proposes zone path-based methods for ridesharing request grouping, significantly enhancing real-time combination generation and outperforming current heuristics in experiments.
Findings
Zone path approaches generate more relevant request combinations.
The methods outperform existing heuristics in both objective and runtime.
Experimental results on real-world and synthetic data validate effectiveness.
Abstract
Real-time ridesharing systems such as UberPool, Lyft Line, GrabShare have become hugely popular as they reduce the costs for customers, improve per trip revenue for drivers and reduce traffic on the roads by grouping customers with similar itineraries. The key challenge in these systems is to group the "right" requests to travel together in the "right" available vehicles in real-time, so that the objective (e.g., requests served, revenue or delay) is optimized. This challenge has been addressed in existing work by: (i) generating as many relevant feasible (with respect to the available delay for customers) combinations of requests as possible in real-time; and then (ii) optimizing assignment of the feasible request combinations to vehicles. Since the number of request combinations increases exponentially with the increase in vehicle capacity and number of requests, unfortunately, such…
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Taxonomy
MethodsEmirates Airlines Office in Dubai
