Fair and Inclusive Participatory Budgeting: Voter Experience with Cumulative and Quadratic Voting Interfaces
August 08, 2023 Β· Declared Dead Β· π INTERACT Workshops
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Authors
Thomas Wellings, Fatemeh Banaie Heravan, Abhinav Sharma, Lodewijk Gelauff, Regula HΓ€nggli Fricker, Evangelos Pournaras
arXiv ID
2308.04345
Category
cs.SE: Software Engineering
Citations
8
Venue
INTERACT Workshops
Last Checked
4 months ago
Abstract
Cumulative and quadratic voting are two distributional voting methods that are expressive, promoting fairness and inclusion, particularly in the realm of participatory budgeting. Despite these benefits, graphical voter interfaces for cumulative and quadratic voting are complex to implement and use effectively. As a result, such methods have not seen yet widespread adoption on digital voting platforms. This paper addresses the challenge by introducing an implementation and evaluation of cumulative and quadratic voting within a state-of-the-art voting platform: Stanford Participatory Budgeting. The findings of the study show that while voters prefer simple methods, the more expressive (and complex) cumulative voting becomes the preferred one compared to k-ranking voting that is simpler but less expressive. The implemented voting interface elements are found useful and support the observed voters' preferences for more expressive voting methods. *
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