Mechanism design augmented with output advice
George Christodoulou, Alkmini Sgouritsa, Ioannis Vlachos

TL;DR
This paper explores a learning-augmented mechanism design framework where mechanisms are guided by output recommendations, aiming for low approximation guarantees with a new measure called quality of recommendation, balancing performance and robustness.
Contribution
It introduces a universal metric for evaluating mechanisms with output advice and provides refined analysis and new mechanisms within this framework.
Findings
Proposed a new measure called quality of recommendation.
Refined analysis of existing mechanisms using the new metric.
Developed new mechanisms with improved guarantees based on output advice.
Abstract
Our work revisits the design of mechanisms via the learning-augmented framework. In this model, the algorithm is enhanced with imperfect (machine-learned) information concerning the input, usually referred to as prediction. The goal is to design algorithms whose performance degrades gently as a function of the prediction error and, in particular, perform well if the prediction is accurate, but also provide a worst-case guarantee under any possible error. This framework has been successfully applied recently to various mechanism design settings, where in most cases the mechanism is provided with a prediction about the types of the players. We adopt a perspective in which the mechanism is provided with an output recommendation. We make no assumptions about the quality of the suggested outcome, and the goal is to use the recommendation to design mechanisms with low approximation…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
Taxonomy
TopicsManufacturing Process and Optimization · Advanced Measurement and Metrology Techniques
