有投资的算法机制设计

IF 6.6 1区 经济学 Q1 ECONOMICS Econometrica Pub Date : 2023-12-07 DOI:10.3982/ECTA19559
Mohammad Akbarpour, Scott Duke Kominers, Kevin Michael Li, Shengwu Li, Paul Milgrom
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引用次数: 1

摘要

我们研究了使用近似算法分配资源的真实机制所产生的投资激励。有些近似算法在分配问题上几乎能保证 100%的最优福利,但在考虑投资激励时却什么也保证不了。当且仅当算法确认的负外部性足够小时,算法的分配保证和投资保证才会重合。我们介绍了knapsack问题的快速近似算法,这些算法没有确认的负外部性,并且在分配和投资方面都有接近100%的保证。
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Algorithmic Mechanism Design With Investment

We study the investment incentives created by truthful mechanisms that allocate resources using approximation algorithms. Some approximation algorithms guarantee nearly 100% of the optimal welfare in the allocation problem but guarantee nothing when accounting for investment incentives. An algorithm's allocative and investment guarantees coincide if and only if its confirming negative externalities are sufficiently small. We introduce fast approximation algorithms for the knapsack problem that have no confirming negative externalities and guarantees close to 100% for both allocation and investment.

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来源期刊
Econometrica
Econometrica 社会科学-数学跨学科应用
CiteScore
11.00
自引率
3.30%
发文量
75
审稿时长
6-12 weeks
期刊介绍: Econometrica publishes original articles in all branches of economics - theoretical and empirical, abstract and applied, providing wide-ranging coverage across the subject area. It promotes studies that aim at the unification of the theoretical-quantitative and the empirical-quantitative approach to economic problems and that are penetrated by constructive and rigorous thinking. It explores a unique range of topics each year - from the frontier of theoretical developments in many new and important areas, to research on current and applied economic problems, to methodologically innovative, theoretical and applied studies in econometrics. Econometrica maintains a long tradition that submitted articles are refereed carefully and that detailed and thoughtful referee reports are provided to the author as an aid to scientific research, thus ensuring the high calibre of papers found in Econometrica. An international board of editors, together with the referees it has selected, has succeeded in substantially reducing editorial turnaround time, thereby encouraging submissions of the highest quality. We strongly encourage recent Ph. D. graduates to submit their work to Econometrica. Our policy is to take into account the fact that recent graduates are less experienced in the process of writing and submitting papers.
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