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arXiv:2305.08125 [cs.GT]AbstractReferencesReviewsResources

Robustness of Participatory Budgeting Outcomes: Complexity and Experiments

Niclas Boehmer, Piotr Faliszewski, Łukasz Janeczko, Andrzej Kaczmarczyk

Published 2023-05-14Version 1

We study the robustness of approval-based participatory budgeting (PB) rules to random noise in the votes. Our contributions are twofold. First, we study the computational complexity of the #Flip-Bribery problem, where given a PB instance we ask for the number of ways in which we can flip a given number of approvals in the votes, so that a specific project is selected. The idea is that #Flip-Bribery captures the problem of computing the funding probabilities of projects in case random noise is added. Unfortunately, the problem is intractable even for the simplest PB rules. Second, we analyze the robustness of several prominent PB rules (including the basic greedy rule and the Method of Equal Shares) on real-life instances from Pabulib. Since #Flip-Bribery is intractable, we resort to sampling to obtain our results. We quantify the extent to which simple, greedy PB rules are more robust than proportional ones, and we identify three types of (very) non-robust projects in real-life PB instances.

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