Pricing Chinese Convertible Bonds with Learning-Based Monte Carlo Simulation Model
Jiangshan Zhu,
Conghua Wen,
Rong Li
Abstract:In this paper, we explore a novel model for pricing Chinese convertible bonds that seamlessly integrates machine learning techniques with traditional models. The least squares Monte Carlo (LSM) method is effective in handling multiple state variables and complex path dependencies through simple regression analysis. In our approach, we incorporate machine learning techniques, specifically support vector regression (SVR) and random forest (RF). By employing Bayesian optimization to fine-tune the random forest, w… Show more
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