Detail View

A City-Wide Crowdsourcing Delivery System with Reinforcement Learning
Citations

WEB OF SCIENCE

Citations

SCOPUS

Metadata Downloads

Title
A City-Wide Crowdsourcing Delivery System with Reinforcement Learning
Issued Date
2021-09
Citation
Ding, Yi. (2021-09). A City-Wide Crowdsourcing Delivery System with Reinforcement Learning. Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies, 5(3), 1–22. doi: 10.1145/3478117
Type
Article
Author Keywords
Crowdsourced LaborCrowdsourcingReinforcement LearningSharing Economy
Keywords
CrowdsourcingDecision makingLearning systemsProfitabilityDispatching problemOptimal order dispatchingPackage deliveryPublic transportationReinforcement learning modelsSequential decision makingTime constraintsUbiquitous computing infrastructureLearning algorithmsReinforcement learningUbiquitous computing
ISSN
2474-9567
Abstract
The revolution of online shopping in recent years demands corresponding evolution in delivery services in urban areas. To cater to this trend, delivery by the crowd has become an alternative to the traditional delivery services thanks to the advances in ubiquitous computing. Notably, some studies use public transportation for crowdsourcing delivery, given its low-cost delivery network with millions of passengers as potential couriers. However, multiple practical impact factors are not considered in existing public-transport-based crowdsourcing delivery studies due to a lack of data and limited ubiquitous computing infrastructures in the past. In this work, we design a crowdsourcing delivery system based on public transport, considering the practical factors of time constraints, multi-hop delivery, and profits. To incorporate the impact factors, we build a reinforcement learning model to learn the optimal order dispatching strategies from massive passenger data and package data. The order dispatching problem is formulated as a sequential decision making problem for the packages routing, i.e., select the next station for the package. A delivery time estimation module is designed to accelerate the training process and provide statistical delivery time guarantee. Three months of real-world public transportation data and one month of package delivery data from an on-demand delivery platform in Shenzhen are used in the evaluation. Compared with existing crowdsourcing delivery algorithms and widely used baselines, we achieve a 40% increase in profit rates and a 29% increase in delivery rates. Comparison with other reinforcement learning algorithms shows that we can improve the profit rate and the delivery rate by 9% and 8% by using time estimation in action filtering. We share the data used in the project to the community for other researchers to validate our results and conduct further research.1 [1]. © 2021 ACM.
URI
http://hdl.handle.net/20.500.11750/15826
DOI
10.1145/3478117
Publisher
Association for Computing Machinery (ACM)
Show Full Item Record

File Downloads

  • There are no files associated with this item.

공유

qrcode
공유하기

Related Researcher

손상혁
Son, Sang Hyuk손상혁

Department of Information and Communication Engineering

read more

Total Views & Downloads