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Approximating APS Under Submodular and XOS Valuations with Binary Marginals

Published: 06 May 2024 Publication History

Abstract

We study the problem of fairly dividing indivisible goods among a set of agents under the fairness notion of Any Price Share (APS). APS is known to dominate the widely studied Maximin share (MMS). Since an exact APS allocation may not exist, the focus has traditionally been on the computation of approximate APS allocations. [4] studied the problem under additive valuations, and asked (i) how large can the APS value be compared to the MMS value? and (ii) what guarantees can one achieve beyond additive functions. We partly answer these questions by considering valuations beyond additive, namely submodular and XOS functions, with binary marginals.
For the submodular functions with binary marginals, also known as matroid rank functions (MRFs), we show that APS is exactly equal to MMS. Consequently, following [5] we show that an exact APS allocation exists and can be computed efficiently while maximizing the social welfare. Complementing this result, we show that it is NP-hard to compute the APS value within a factor of 5/6 for submodular valuations with three distinct marginals of {0, 1/2, 1.}
We then consider binary XOS functions, which are immediate generalizations of binary submodular functions in the complement free hierarchy. In contrast to the MRFs setting, MMS and APS values are not equal under this case. Nevertheless, we can show that they are only a constant factor apart. In particular, we show that under binary XOS valuations, MMS ≤= APS ≤= 2 x MMS + 1. Further, we show that this is almost the tightest bound we can get using MMS, by giving an instance where APS ≥= 2 x MMS. The upper bound on APS, combined with [17], implies a 0.1222-approximation for APS under binary XOS valuations. And the lower bound implies the non-existence of better than 0.5-APS even when agents have identical valuations, which is in sharp contrast to the guaranteed existence of exact MMS allocation when agent valuations are identical.

References

[1]
Georgios Amanatidis, Georgios Birmpas, Aris Filos-Ratsikas, and Alexandros A Voudouris. 2022. Fair division of indivisible goods: A survey. arXiv preprint arXiv:2202.07551 (2022).
[2]
Haris Aziz, Bo Li, Herve Moulin, and Xiaowei Wu. 2022. Algorithmic fair allocation of indivisible items: A survey and new questions. arXiv preprint arXiv:2202.08713 (2022).
[3]
Moshe Babaioff, Tomer Ezra, and Uriel Feige. 2021a. Fair and truthful mechanisms for dichotomous valuations. In Proceedings of the AAAI Conference on Artificial Intelligence, Vol. 35. 5119--5126.
[4]
Moshe Babaioff, Tomer Ezra, and Uriel Feige. 2021b. Fair-Share Allocations for Agents with Arbitrary Entitlements. In Proceedings of the 22nd ACM Conference on Economics and Computation. 127--127.
[5]
Siddharth Barman, Umang Bhaskar, Anand Krishna, and Ranjani G Sundaram. 2020. Tight Approximation Algorithms for p-Mean Welfare Under Subadditive Valuations. arXiv preprint arXiv:2005.07370 (2020).
[6]
Siddharth Barman and Paritosh Verma. 2020. Existence and computation of maximin fair allocations under matroid-rank valuations. arXiv preprint arXiv:2012.12710 (2020).
[7]
Siddharth Barman and Paritosh Verma. 2021a. Approximating Nash social welfare under binary XOS and binary subadditive valuations. In International Conference on Web and Internet Economics. Springer, 373--390.
[8]
Siddharth Barman and Paritosh Verma. 2021b. Existence and Computation of Maximin Fair Allocations Under Matroid-Rank Valuations. In Proceedings of the 20th International Conference on Autonomous Agents and MultiAgent Systems. 169--177.
[9]
Gilad Ben Uziahu and Uriel Feige. 2023. On Fair Allocation of Indivisible Goods to Submodular Agents. arXiv e-prints (2023), arXiv-2303.
[10]
Nawal Benabbou, Mithun Chakraborty, Ayumi Igarashi, and Yair Zick. 2021. Finding fair and efficient allocations for matroid rank valuations. ACM Transactions on Economics and Computation, Vol. 9, 4 (2021), 1--41.
[11]
Mithun Chakraborty, Erel Segal-Halevi, and Warut Suksompong. 2022. Weighted fairness notions for indivisible items revisited. In Proceedings of the AAAI Conference on Artificial Intelligence, Vol. 36. 4949--4956.
[12]
Uriel Feige and Yehonatan Tahan. 2022. On allocations that give intersecting groups their fair share. arXiv preprint arXiv:2204.06820 (2022).
[13]
Jugal Garg, Peter McGlaughlin, and Setareh Taki. 2018. Approximating Maximin Share Allocations. In 2nd Symposium on Simplicity in Algorithms (SOSA 2019). Schloss Dagstuhl-Leibniz-Zentrum fuer Informatik.
[14]
Mohammad Ghodsi, Mohammadtaghi Hajiaghayi, Masoud Seddighin, Saeed Seddighin, and Hadi Yami. 2018. Fair Allocation of Indivisible Goods: Improvements and Generalizations. In Proceedings of the 2018 ACM Conference on Economics and Computation (Ithaca, NY, USA) (EC'18). https://doi.org/10.1145/3219166.3219238
[15]
Bo Li, Yingkai Li, and Xiaowei Wu. 2021. Almost proportional allocations for indivisible chores. arXiv preprint arXiv:2103.11849 (2021).
[16]
Zhentao Li and Adrian Vetta. 2018. The Fair Division of Hereditary Set Systems. In International Conference on Web and Internet Economics. Springer, 297--311.
[17]
Zhentao Li and Adrian Vetta. 2021. The fair division of hereditary set systems. ACM Transactions on Economics and Computation (TEAC), Vol. 9, 2 (2021), 1--19.
[18]
Ariel D Procaccia and Junxing Wang. 2014. Fair enough: Guaranteeing approximate maximin shares. In Proceedings of the fifteenth ACM conference on Economics and computation. ACM, 675--692.
[19]
Alexander Schrijver et al. 2003. Combinatorial optimization: polyhedra and efficiency. Vol. 24. Springer.
[20]
Akiyoshi Shioura. 2012. Matroid rank functions and discrete concavity. Japan journal of industrial and applied mathematics, Vol. 29, 3 (2012), 535--546.
[21]
Hugo Steinhaus. 1948. The problem of fair division. Econometrica, Vol. 16 (1948), 101--104.
[22]
Vignesh Viswanathan and Yair Zick. 2022. Yankee Swap: a Fast and Simple Fair Allocation Mechanism for Matroid Rank Valuations. arXiv preprint arXiv:2206.08495 (2022).

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cover image ACM Conferences
AAMAS '24: Proceedings of the 23rd International Conference on Autonomous Agents and Multiagent Systems
May 2024
2898 pages
ISBN:9798400704864

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International Foundation for Autonomous Agents and Multiagent Systems

Richland, SC

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Published: 06 May 2024

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Author Tags

  1. approximation algorithms
  2. fair division
  3. matroid structures
  4. xos valuations

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Overall Acceptance Rate 1,155 of 5,036 submissions, 23%

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