Online Combinatorial Allocations and Auctions with Few Samples
Paul D\"utting, Thomas Kesselheim, Brendan Lucier, Rebecca, Reiffenh\"auser, and Sahil Singla

TL;DR
This paper demonstrates that with very limited samples, it is possible to design online algorithms and truthful mechanisms for combinatorial auctions that achieve constant or near-constant competitive ratios, advancing practical applicability.
Contribution
It introduces novel algorithms that use minimal samples to achieve competitive ratios in online combinatorial auctions, including a single-sample approach and a polynomial-sample truthful mechanism.
Findings
Single sample suffices for O(1)-competitive algorithms.
Polynomial samples enable (2+ε)-competitive truthful mechanisms.
Extension of secretary and prophet inequality techniques to combinatorial settings.
Abstract
In online combinatorial allocations/auctions, n bidders sequentially arrive, each with a combinatorial valuation (such as submodular/XOS) over subsets of m indivisible items. The aim is to immediately allocate a subset of the remaining items to maximize the total welfare, defined as the sum of bidder valuations. A long line of work has studied this problem when the bidder valuations come from known independent distributions. In particular, for submodular/XOS valuations, we know 2-competitive algorithms/mechanisms that set a fixed price for each item and the arriving bidders take their favorite subset of the remaining items given these prices. However, these algorithms traditionally presume the availability of the underlying distributions as part of the input to the algorithm. Contrary to this assumption, practical scenarios often require the learning of distributions, a task complicated…
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Taxonomy
TopicsAuction Theory and Applications · Optimization and Search Problems · Consumer Market Behavior and Pricing
MethodsSparse Evolutionary Training
