Approximate Competitive Equilibrium from Equal Incomes

Approximate Competitive Equilibrium from Equal Incomes (A-CEEI) is a procedure for fair item assignment. It was developed by Eric Budish.[1]

Background

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CEEI (Competitive Equilibrium from Equal Incomes) is a fundamental rule for fair division of divisible resources. It divides the resources according to the outcome of the following hypothetical process:

  • Each agent receives a single unit of fiat money. This is the Equal Incomes part of CEEI.
  • The agents trade freely until the market attains a Competitive Equilibrium. This is a price-vector and an allocation, such that (a) each allocated bundle is optimal to its agent given his/her income - the agent cannot purchase a better bundle with the same income, and (b) the market clears - the sum of all allocations exactly equals the initial endowment.

The equilibrium allocation is provably envy free and Pareto efficient. Moreover, when the agents have linear utility functions, the CEEI allocation can be computed efficiently.

Unfortunately, when there are indivisibilities, a CEEI does not always exist, so it cannot be used directly for fair item assignment. However, it can be approximated, and the approximation has good fairness, efficiency and strategic properties.

Assumptions

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A-CEEI only assumes that the agents know how to rank bundles of items. The ranking need not be weakly additive nor even monotone.

Procedure

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A-CEEI with parameters   divides the resources according to the outcome of the following hypothetical process:

  • Approximate-EI: each agent receives an income between 1 and  . The exact income of each agent can be determined randomly, or by seniority (seniors can get a slightly higher income).
  • Approximate-CE: a price-vector and an allocation are calculated, such that (a) each allocated bundle is optimal to its agent given its budget, and (b) the market "almost" clears: the Euclidean distance between the sum of all allocations and the initial endowment is at most  .

Budish proves that, for any   , there exists  -CEEI where   depends on the minimum between the number of different item-types and the number of different items that an agent may receive.

Guarantees

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The allocation satisfies the following properties:

  • Envy-free-except-1-item (see envy-free item assignment).
  •  -maximin-share-guarantee.
  • Pareto efficiency with respect to the allocated items. I.e, there is no Pareto-improving trade among the agents, but there may be Pareto-improving traders between an agent and the market-maker.

Moreover, the A-CEEI mechanism is strategyproof "in the large": when there are many agents, each agent has only a small influence on the price, so the agents act as price takers. Then, it is optimal for each agent to report his true valuations, since it allows the mechanism to give him an optimal bundle given the prices.

Computation

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The A-CEEI allocation is hard to compute: it is PPAD complete.[2]

However, in realistic-size problems, A-CEEI can be computed using a two-level search process:

  1. Master level: the center uses tabu search to suggest prices;
  2. Agent level: mixed integer programs are solved to find agent demands at the current prices.

The agent-level program can be done in parallel for all agents, so this method scales near-optimally in the number of processors.[3]

The mechanism has been considered for the task of assigning students to courses at the Wharton School of the University of Pennsylvania. [4]

Comparison to maximum-Nash welfare

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The Maximum-Nash-Welfare (MNW) algorithm finds an allocation that maximizes the product of the agents' utilities. It is similar to A-CEEI in several respects:[5]

  • Both algorithms find an EF-except-1 allocation.
  • Both algorithms approximate the maximin-share-guarantee.

However, A-CEEI has several advantages:

  • It works with arbitrary utility functions - not only submodular ones. It does not even require monotonicity of preferences.
  • It works with ordinal input - the agents are only required to report their ranking over bundles - not their numeric valuation of items.
  • It is strategy proof "in the large".

On the flip side, A-CEEI has several disadvantages:

  • There is an approximation error in the items that are allocated - some items might be in excess demand or excess supply.[6]
  • In particular, the returned allocation is not Pareto-efficient - some items remain unallocated (it is Pareto-efficient only with respect to the allocated items).

The approximation error of A-CEEI grows with the number of distinct items, but not with the number of players or the number of copies of each item. Therefore, A-CEEI is better when there are many agents and many copies of each item. A typical application is when the agents are students and the items are positions in courses.[6]

In contrast, MNW is better when there are few agents and many distinct items, such as in inheritance division.

Comparison to competitive equilibrium

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A-CEEI (and CEEI in general) is related, but not identical, to the concept of competitive equilibrium.

  • Competitive equilibrium (CE) is a descriptive concept: it describes the situation in free market when the price stabilizes and the demand equals the supply.
  • CEEI is a normative concept: it describes a rule for dividing commodities between people.

See also

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References

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  1. ^ Budish, Eric (2011). "The Combinatorial Assignment Problem: Approximate Competitive Equilibrium from Equal Incomes". Journal of Political Economy. 119 (6): 1061–1103. doi:10.1086/664613. S2CID 1161325.
  2. ^ Othman, Abraham; Papadimitriou, Christos; Rubinstein, Aviad (2016). "The Complexity of Fairness Through Equilibrium". ACM Transactions on Economics and Computation. 4 (4): 1. arXiv:1312.6249. doi:10.1145/2956583.
  3. ^ Abraham Othman; Tuomas Sandholm & Eric Budish (2010). Finding approximate competitive equilibria: efficient and fair course allocation (PDF). AAMAS '10. acm.org
  4. ^ Budish, Eric; Kessler, Judd B. (2016). "Bringing Real Market Participants' Real Preferences into the Lab: An Experiment that Changed the Course Allocation Mechanism at Wharton" (PDF). Archived from the original (PDF) on 2017-03-07. Retrieved 2017-03-06.
  5. ^ Caragiannis, Ioannis; Kurokawa, David; Moulin, Hervé; Procaccia, Ariel D.; Shah, Nisarg; Wang, Junxing (2016). The Unreasonable Fairness of Maximum Nash Welfare (PDF). Proceedings of the 2016 ACM Conference on Economics and Computation - EC '16. p. 305. doi:10.1145/2940716.2940726. ISBN 9781450339360.
  6. ^ a b Kurokawa, David; Procaccia, Ariel D.; Wang, Junxing (2018-02-01). "Fair Enough: Guaranteeing Approximate Maximin Shares". J. ACM. 65 (2): 8:1–8:27. doi:10.1145/3140756. ISSN 0004-5411. S2CID 1525401.