TL;DR
This paper introduces a new mechanism for budget-feasible design that outperforms existing worst-case optimal mechanisms on realistic instances and is proven to be optimal in a semi-adversarial model, offering both practical and theoretical improvements.
Contribution
The paper presents a novel mechanism that is worst-case optimal and performs well on realistic instances, along with a theoretical analysis in a semi-adversarial model showing its optimality and robustness.
Findings
Mechanism outperforms existing methods on realistic instances.
Mechanism guarantees better-than-$(1-1/e)$ competitive ratio in semi-adversarial model.
Characterization of worst-case markets for given budget distributions.
Abstract
Motivated by large-market applications such as crowdsourcing, we revisit the problem of budget-feasible mechanism design under a "small-bidder assumption". Anari, Goel, and Nikzad (2018) gave a mechanism that has optimal competitive ratio on worst-case instances. However, we observe that on many realistic instances, their mechanism is significantly outperformed by a simpler open clock auction by Ensthaler and Giebe (2014), although the open clock auction only achieves competitive ratio in the worst case. Is there a mechanism that gets the best of both worlds, i.e., a mechanism that is worst-case optimal and performs favorably on realistic instances? Our first main result is the design and the analysis of a natural mechanism that gives an affirmative answer to our question above: (i) We prove that on every instance, our mechanism performs at least as good as all uniform…
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Videos
Beyond Worst-Case Budget-Feasible Mechanism Design· youtube
