Learning-Augmented Metric Distortion via $(p,q)$-Veto Core
Ben Berger, Michal Feldman, Vasilis Gkatzelis, Xizhi Tan

TL;DR
This paper introduces bounds on the distortion of (p,q)-veto core algorithms in metric voting and develops a learning-augmented approach that balances prediction accuracy with worst-case guarantees.
Contribution
It provides new upper bounds on the distortion of (p,q)-veto core algorithms and designs a learning-augmented algorithm with optimal robustness and consistency trade-off.
Findings
Established upper bounds on distortion for arbitrary weight vectors.
Developed a prediction-guided algorithm achieving optimal robustness and consistency.
Revisited metric distortion with a learning-augmented framework.
Abstract
In the metric distortion problem there is a set of candidates and voters in the same metric space. The goal is to select a candidate minimizing the social cost: the sum of distances of the selected candidate from all the voters, and the challenge arises from the algorithm receiving only ordinaL input: each voter's ranking of candidate, while the objective function is cardinal, determined by the underlying metric. The distortion of an algorithm is its worst-case approximation factor of the optimal social cost. A key concept here is the (p,q)-veto core, with and being normalized weight vectors representing voters' veto power and candidates' support, respectively. The (p,q)-veto core corresponds to a set of winners from a specific class of deterministic algorithms. Notably, the optimal distortion of is obtained from this class, by selecting…
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Taxonomy
TopicsSmart Parking Systems Research · Sparse and Compressive Sensing Techniques · Complexity and Algorithms in Graphs
