Demo Abstract: A Spatio-Temporal System for Public Transit-Guided Volunteer Task Matching

Published: 01 Jan 2024, Last Modified: 07 Oct 2025IPSN 2024EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Volunteer activity often undergoes unique transformations with the constant changes in society. The information behind volunteer data was created to enhance public welfare efficiently and boost governmental organization productivity. This research aims to utilize public transit systems for volunteer services, reducing inequality in volunteer service provision across different regions and improving overall service efficiency. We collected and processed large-scale data related to public transit and volunteer services, conducting in-depth analysis using data mining techniques and deep learning methods. Through LDA, we annotated a large amount of volunteer data, and via data analysis, discovered patterns related to population distribution, spatial distribution, and temporal distribution. Combining public transit data and the mined features, we propose a novel spatio-temporal embedding model based on the transformer architecture, which can effectively classify and predict the matching between volunteer service demands and public transit systems. Studying the coupling between volunteer services and transportation systems helps establish a new data-driven mindset, better utilize urban resources, and provide high-quality volunteer services to the public.
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