Journal article

Resource allocation, computational complexity, and market design

Peter Bossaerts, Elizabeth Bowman, Felix Fattinger, Harvey Huang, Michelle Lee, Carsten Murawski, Anirudh Suthakar, Shireen Tang, Nitin Yadav

Journal of behavioral and experimental finance | Elsevier | Published : 2024

Open access

Abstract

With three experiments, we study the design of financial markets to help spread knowledge about solutions to the 0-1 Knapsack Problem (KP), a combinatorial resource allocation problem. To solve the KP, substantial cognitive effort is required; random sampling is ineffective and humans rarely resort to it. The theory of computational complexity motivates our experiment designs. Complete markets generate noisy prices and knowledge spreads poorly. Instead, one carefully chosen security per problem instance causes accurate pricing and effective knowledge dissemination. This contrasts with information aggregation experiments. There, values depend on solutions to probabilistic problems, which can ..

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Grants

Awarded by Australian Research Council, Australia


Funding Acknowledgements

Bossaerts gratefully acknowledges funding from The University of Melbourne (R@MAP Chair) , Australia, the Australian Research Council (ARC DP 180102284) , Australia and from the Leverhulme Trust (Leverhulme International Professorship in Neuroeconomics) , United Kingdom. We thank the reviewer and editor for many constructive comments and suggestions.