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Arbitrage-Free Bond and Yield Curve Forecasting with Neural Filters under HJM Constraints

Arbitrage-Free Bond and Yield Curve Forecasting with Neural Filters under HJM Constraints ArXiv ID: 2511.17892 “View on arXiv” Authors: Xiang Gao, Cody Hyndman Abstract We develop an arbitrage-free deep learning framework for yield curve and bond price forecasting based on the Heath-Jarrow-Morton (HJM) term-structure model and a dynamic Nelson-Siegel parameterization of forward rates. Our approach embeds a no-arbitrage drift restriction into a neural state-space architecture by combining Kalman, extended Kalman, and particle filters with recurrent neural networks (LSTM/CLSTM), and introduces an explicit arbitrage error regularization (AER) term during training. The model is applied to U.S. Treasury and corporate bond data, and its performance is evaluated for both yield-space and price-space predictions at 1-day and 5-day horizons. Empirically, arbitrage regularization leads to its strongest improvements at short maturities, particularly in 5-day-ahead forecasts, increasing market-consistency as measured by bid-ask hit rates and reducing dollar-denominated prediction errors. ...

November 22, 2025 · 2 min · Research Team

Supervised Similarity for High-Yield Corporate Bonds with Quantum Cognition Machine Learning

Supervised Similarity for High-Yield Corporate Bonds with Quantum Cognition Machine Learning ArXiv ID: 2502.01495 “View on arXiv” Authors: Unknown Abstract We investigate the application of quantum cognition machine learning (QCML), a novel paradigm for both supervised and unsupervised learning tasks rooted in the mathematical formalism of quantum theory, to distance metric learning in corporate bond markets. Compared to equities, corporate bonds are relatively illiquid and both trade and quote data in these securities are relatively sparse. Thus, a measure of distance/similarity among corporate bonds is particularly useful for a variety of practical applications in the trading of illiquid bonds, including the identification of similar tradable alternatives, pricing securities with relatively few recent quotes or trades, and explaining the predictions and performance of ML models based on their training data. Previous research has explored supervised similarity learning based on classical tree-based models in this context; here, we explore the application of the QCML paradigm for supervised distance metric learning in the same context, showing that it outperforms classical tree-based models in high-yield (HY) markets, while giving comparable or better performance (depending on the evaluation metric) in investment grade (IG) markets. ...

February 3, 2025 · 2 min · Research Team

Optimal Linear Signal: An Unsupervised Machine Learning Framework to Optimize PnL with Linear Signals

Optimal Linear Signal: An Unsupervised Machine Learning Framework to Optimize PnL with Linear Signals ArXiv ID: 2401.05337 “View on arXiv” Authors: Unknown Abstract This study presents an unsupervised machine learning approach for optimizing Profit and Loss (PnL) in quantitative finance. Our algorithm, akin to an unsupervised variant of linear regression, maximizes the Sharpe Ratio of PnL generated from signals constructed linearly from exogenous variables. The methodology employs a linear relationship between exogenous variables and the trading signal, with the objective of maximizing the Sharpe Ratio through parameter optimization. Empirical application on an ETF representing U.S. Treasury bonds demonstrates the model’s effectiveness, supported by regularization techniques to mitigate overfitting. The study concludes with potential avenues for further development, including generalized time steps and enhanced corrective terms. ...

November 22, 2023 · 2 min · Research Team