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Testing replication for an agent-based model of market fragmentation and latency arbitrage

Author

Listed:
  • Ethan Ratliff-Crain
  • Colin M. Van Oort
  • Matthew T. K. Koehler
  • Brian F. Tivnan

Abstract

This study strengthens the foundations of multi-venue market modeling by attempting an independent replication of Wah and Wellman's 2016 model of latency arbitrage in a fragmented market. We find that faithful replication is hindered by missing implementation details in the original paper and limited quantitative reporting. We demonstrate that increasing the number of simulation runs beyond the original design allows for the creation of bootstrap confidence intervals to support rigorous tests of quantitative alignment, compensating for lacking distributional information (e.g. variance). We also demonstrate that increased complexity across the modeled scenarios corresponds with increased difficulty aligning to the original results. We draw on a codebase released by the original authors in connection with a later paper to recover additional implementation details; however, we reject quantitative alignment between that codebase and the published results. Combining information from the paper and the released code, we achieve relational equivalence for most metrics but reject quantitative alignment for model settings where latency is non-zero. We show that many of the qualitative takeaways from the original paper on the effects of market fragmentation and latency arbitrage are sensitive to the specifics of a `greedy strategy' extension given to the zero-intelligence (ZI) trader agents. Under an alternative interpretation of this strategy, we find that market fragmentation decreases execution times in all experiments and increases trader welfare in most experiments. Finally, to facilitate future replication, critique, and extension, we provide an ODD (Overview, Design concepts, Details) protocol for our implementations of the model.

Suggested Citation

  • Ethan Ratliff-Crain & Colin M. Van Oort & Matthew T. K. Koehler & Brian F. Tivnan, 2026. "Testing replication for an agent-based model of market fragmentation and latency arbitrage," Papers 2604.20067, arXiv.org.
  • Handle: RePEc:arx:papers:2604.20067
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    References listed on IDEAS

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    1. Leonna Szangolies & Marie-Sophie Rohwäder & Hazem Ahmed & Fatima Jahanmiri & Alexander Wagner & Rodrigo Souto-Veiga & Volker Grimm & Cara Gallagher, 2024. "Visual ODD: A Standardised Visualisation Illustrating the Narrative of Agent-Based Models," Journal of Artificial Societies and Social Simulation, Journal of Artificial Societies and Social Simulation, vol. 27(4), pages 1-1.
    2. Eric Smith & J Doyne Farmer & Laszlo Gillemot & Supriya Krishnamurthy, 2003. "Statistical theory of the continuous double auction," Quantitative Finance, Taylor & Francis Journals, vol. 3(6), pages 481-514.
    3. Uri Wilensky & William Rand, 2007. "Making Models Match: Replicating an Agent-Based Model," Journal of Artificial Societies and Social Simulation, Journal of Artificial Societies and Social Simulation, vol. 10(4), pages 1-2.
    4. Colin M. Van Oort & Ethan Ratliff-Crain & Brian F. Tivnan & Safwan Wshah, 2023. "Adaptive Agents and Data Quality in Agent-Based Financial Markets," Papers 2311.15974, arXiv.org.
    5. Brian Tivnan & Matthew Koehler & Matthew McMahon & Matthew Olson & Neal Rothleder & Rajani Shenoy, 2011. "Adding to the Regulator's Toolbox: Integration and Extension of Two Leading Market Models," Papers 1105.5439, arXiv.org.
    6. Ethan Ratliff-Crain & Colin M. Van Oort & Matthew T. K. Koehler & Brian F. Tivnan, 2025. "Revisiting Cont's stylized facts for modern stock markets," Quantitative Finance, Taylor & Francis Journals, vol. 25(9), pages 1343-1373, September.
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