ArXiv TLDR

A Model and Estimation of the Bitcoin Transaction Fee

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2604.17183

Daniel Aronoff, Kristian Praizner, Armin Sabouri

cs.CEcs.LGecon.EM

TLDR

This paper develops and estimates a structural model of Bitcoin transaction fee choice using novel mempool data, treating it as a market for scarce blockspace.

Key contributions

  • Developed a structural model for Bitcoin transaction fees, treating the mempool as a market.
  • Assembled a novel, high-frequency mempool panel from a self-run Bitcoin node.
  • Estimated a monotone delay technology linking fee-rate priority to confirmation delay.
  • Found congestion is the main delay determinant; marginal value of priority is priced.

Why it matters

Understanding Bitcoin transaction fees is crucial as block subsidies decline. This paper provides a novel structural model and empirical estimation using unique mempool data, offering key insights into fee formation, congestion's impact, and transactor behavior. This helps predict and manage future network economics.

Original Abstract

Bitcoin transaction fees will become more important as the block subsidy declines, but fee formation is hard to study with blockchain data alone because the relevant queueing environment is unobserved. We develop and estimate a structural model of Bitcoin fee choice that treats the mempool as a market for scarce blockspace. We assemble a novel, high-frequency mempool panel, from a self-run Bitcoin node that records transaction arrivals, exits, block inclusion, fee-bumping events, and congestion snapshots. We characterize the fee market as a Vickery-Clarke-Groves mechanism and derive an equation to estimate fees. In the first-stage we estimate a monotone delay technology linking fee-rate priority and network state to expected confirmation delay. We then estimate how fees respond to that delay technology and to transaction characteristics. We find that congestion is the main determinant of delay; that the marginal value of priority is priced in fees, which is increasing in the gradient of confirmation time reduction per movement up in the fee queue; and that transactor choice of RBF, CPFP, and block conditions have economically important effects on fees.

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