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Towards Replication-Robust Analytics Markets

Author

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  • Thomas Falconer
  • Jalal Kazempour
  • Pierre Pinson

Abstract

Many industries rely on data-driven analytics, yet useful datasets are often distributed amongst market competitors that are reluctant to collaborate and share information. Recent literature proposes analytics markets to provide monetary incentives for data sharing, however many of these market designs are vulnerable to malicious forms of replication -- whereby agents replicate their data and act under multiple identities to increase revenue. We develop a replication-robust analytics market, centering on supervised learning for regression. To allocate revenue, we use a Shapley value-based attribution policy, framing the features of agents as players and their interactions as a characteristic function game. We show that there are different ways to describe such a game, each with causal nuances that affect robustness to replication. Our proposal is validated using a real-world wind power forecasting case study.

Suggested Citation

  • Thomas Falconer & Jalal Kazempour & Pierre Pinson, 2023. "Towards Replication-Robust Analytics Markets," Papers 2310.06000, arXiv.org, revised Feb 2024.
  • Handle: RePEc:arx:papers:2310.06000
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    References listed on IDEAS

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