Paul Dütting, Thomas Kesselheim, Brendan Lucier, Rebecca Reiffenhäuser, Sahil Singla
{"title":"在线组合分配和少量样本拍卖","authors":"Paul Dütting, Thomas Kesselheim, Brendan Lucier, Rebecca Reiffenhäuser, Sahil Singla","doi":"arxiv-2409.11091","DOIUrl":null,"url":null,"abstract":"In online combinatorial allocations/auctions, n bidders sequentially arrive,\neach with a combinatorial valuation (such as submodular/XOS) over subsets of m\nindivisible items. The aim is to immediately allocate a subset of the remaining\nitems to maximize the total welfare, defined as the sum of bidder valuations. A\nlong line of work has studied this problem when the bidder valuations come from\nknown independent distributions. In particular, for submodular/XOS valuations,\nwe know 2-competitive algorithms/mechanisms that set a fixed price for each\nitem and the arriving bidders take their favorite subset of the remaining items\ngiven these prices. However, these algorithms traditionally presume the\navailability of the underlying distributions as part of the input to the\nalgorithm. Contrary to this assumption, practical scenarios often require the\nlearning of distributions, a task complicated by limited sample availability.\nThis paper investigates the feasibility of achieving O(1)-competitive\nalgorithms under the realistic constraint of having access to only a limited\nnumber of samples from the underlying bidder distributions. Our first main contribution shows that a mere single sample from each bidder\ndistribution is sufficient to yield an O(1)-competitive algorithm for\nsubmodular/XOS valuations. This result leverages a novel extension of the\nsecretary-style analysis, employing the sample to have the algorithm compete\nagainst itself. Although online, this first approach does not provide an online\ntruthful mechanism. Our second main contribution shows that a polynomial number\nof samples suffices to yield a $(2+\\epsilon)$-competitive online truthful\nmechanism for submodular/XOS valuations and any constant $\\epsilon>0$. This\nresult is based on a generalization of the median-based algorithm for the\nsingle-item prophet inequality problem to combinatorial settings with multiple\nitems.","PeriodicalId":501525,"journal":{"name":"arXiv - CS - Data Structures and Algorithms","volume":"10 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-09-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Online Combinatorial Allocations and Auctions with Few Samples\",\"authors\":\"Paul Dütting, Thomas Kesselheim, Brendan Lucier, Rebecca Reiffenhäuser, Sahil Singla\",\"doi\":\"arxiv-2409.11091\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"In online combinatorial allocations/auctions, n bidders sequentially arrive,\\neach with a combinatorial valuation (such as submodular/XOS) over subsets of m\\nindivisible items. The aim is to immediately allocate a subset of the remaining\\nitems to maximize the total welfare, defined as the sum of bidder valuations. A\\nlong line of work has studied this problem when the bidder valuations come from\\nknown independent distributions. In particular, for submodular/XOS valuations,\\nwe know 2-competitive algorithms/mechanisms that set a fixed price for each\\nitem and the arriving bidders take their favorite subset of the remaining items\\ngiven these prices. However, these algorithms traditionally presume the\\navailability of the underlying distributions as part of the input to the\\nalgorithm. Contrary to this assumption, practical scenarios often require the\\nlearning of distributions, a task complicated by limited sample availability.\\nThis paper investigates the feasibility of achieving O(1)-competitive\\nalgorithms under the realistic constraint of having access to only a limited\\nnumber of samples from the underlying bidder distributions. Our first main contribution shows that a mere single sample from each bidder\\ndistribution is sufficient to yield an O(1)-competitive algorithm for\\nsubmodular/XOS valuations. This result leverages a novel extension of the\\nsecretary-style analysis, employing the sample to have the algorithm compete\\nagainst itself. Although online, this first approach does not provide an online\\ntruthful mechanism. Our second main contribution shows that a polynomial number\\nof samples suffices to yield a $(2+\\\\epsilon)$-competitive online truthful\\nmechanism for submodular/XOS valuations and any constant $\\\\epsilon>0$. 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Online Combinatorial Allocations and Auctions with Few Samples
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 by limited sample availability.
This paper investigates the feasibility of achieving O(1)-competitive
algorithms under the realistic constraint of having access to only a limited
number of samples from the underlying bidder distributions. Our first main contribution shows that a mere single sample from each bidder
distribution is sufficient to yield an O(1)-competitive algorithm for
submodular/XOS valuations. This result leverages a novel extension of the
secretary-style analysis, employing the sample to have the algorithm compete
against itself. Although online, this first approach does not provide an online
truthful mechanism. Our second main contribution shows that a polynomial number
of samples suffices to yield a $(2+\epsilon)$-competitive online truthful
mechanism for submodular/XOS valuations and any constant $\epsilon>0$. This
result is based on a generalization of the median-based algorithm for the
single-item prophet inequality problem to combinatorial settings with multiple
items.