English

Enhanced fill probability estimates in institutional algorithmic bond trading using statistical learning algorithms with quantum computers

Quantum Physics 2025-09-23 v1 Trading and Market Microstructure

Abstract

The estimation of fill probabilities for trade orders represents a key ingredient in the optimization of algorithmic trading strategies. It is bound by the complex dynamics of financial markets with inherent uncertainties, and the limitations of models aiming to learn from multivariate financial time series that often exhibit stochastic properties with hidden temporal patterns. In this paper, we focus on algorithmic responses to trade inquiries in the corporate bond market and investigate fill probability estimation errors of common machine learning models when given real production-scale intraday trade event data, transformed by a quantum algorithm running on IBM Heron processors, as well as on noiseless quantum simulators for comparison. We introduce a framework to embed these quantum-generated data transforms as a decoupled offline component that can be selectively queried by models in low-latency institutional trade optimization settings. A trade execution backtesting method is employed to evaluate the fill prediction performance of these models in relation to their input data. We observe a relative gain of up to ~ 34% in out-of-sample test scores for those models with access to quantum hardware-transformed data over those using the original trading data or transforms by noiseless quantum simulation. These empirical results suggest that the inherent noise in current quantum hardware contributes to this effect and motivates further studies. Our work demonstrates the emerging potential of quantum computing as a complementary explorative tool in quantitative finance and encourages applied industry research towards practical applications in trading.

Keywords

Cite

@article{arxiv.2509.17715,
  title  = {Enhanced fill probability estimates in institutional algorithmic bond trading using statistical learning algorithms with quantum computers},
  author = {Axel Ciceri and Austin Cottrell and Joshua Freeland and Daniel Fry and Hirotoshi Hirai and Philip Intallura and Hwajung Kang and Chee-Kong Lee and Abhijit Mitra and Kentaro Ohno and Das Pemmaraju and Manuel Proissl and Brian Quanz and Del Rajan and Noriaki Shimada and Kavitha Yograj},
  journal= {arXiv preprint arXiv:2509.17715},
  year   = {2025}
}

Comments

16 pages, 13 Figures, 4 Tables

R2 v1 2026-07-01T05:49:29.749Z