Fair Allocation in Crowd-Sourced Systems

Author:

Assif Mishal1ORCID,Kennedy William2,Saniee Iraj2ORCID

Affiliation:

1. Department of Electrical and Computer Engineering, University of Illinois Urbana-Champaign, Urbana, IL 61801, USA

2. Mathematics & Algorithms Research Group, AI Lab, Bell Labs, Nokia, Murray Hill, NJ 07974, USA

Abstract

In this paper, we address the problem of fair sharing of the total value of a crowd-sourced network system between major participants (founders) and minor participants (crowd) using cooperative game theory. We use the framework of a Shapley allocation which is regarded as a fundamental method of computing the fair share of all participants in a cooperative game when the values of all possible coalitions could be quantified. To quantify the value of all coalitions, we define a class of value functions for crowd-sourced systems which capture the contributions of the founders and the crowd plausibly and derive closed-form expressions for Shapley allocations to both. These value functions are defined for different scenarios, such as the presence of oligopolies or geographic spread of the crowd, taking network effects, including Metcalfe’s law, into account. A key result we obtain is that under quite general conditions, the crowd participants are collectively owed a share between 12 and 23 of the total value of the crowd-sourced system. We close with an empirical analysis demonstrating the consistency of our results with the compensation offered to the crowd participants in some public internet content sharing companies.

Funder

Nokia Bell Labs

Publisher

MDPI AG

Subject

Applied Mathematics,Statistics, Probability and Uncertainty,Statistics and Probability

Reference24 articles.

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4. Lanier, J. (2013). Who Owns the Future?, Simon and Shuster.

5. Jia, R., Dao, D., Wang, B., Hubis, F.A., Hynes, N., Gürel, N.M., Li, B., Zhang, C., Song, D., and Spanos, C.J. (2019, January 16–18). Towards efficient data valuation based on the shapley value. Proceedings of the 22nd International Conference on Artificial Intelligence and Statistics, Naha, Okinawa.

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