基于支持向量机与Copula函数集成的可转换债券定价

Chuanhe Shen, Xiangrong Wang
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引用次数: 0

摘要

可转债作为一种混合型金融工具,其定价问题对我国金融市场构成了巨大的挑战。提出了一种将支持向量机与copula函数相结合的新方法。与现有的基于公司价值和标的股价的单因素或双因素定价模型不同,该模型可以有效地处理转债定价的非线性、偏离正态、多元联合分布、变量依赖结构等诸多约束。特别是,新模型具有很大的灵活性,可以用联结函数来描述股票价格和利率之间的依赖结构,支持向量机可以进一步处理变量之间的非线性关系。实证分析表明,该模型增强了样本外的生成能力,与单一支持向量机相比,转债定价精度显著提高,并且通过该模型可以方便有效地度量转债值对存量和依赖结构的敏感性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pricing Convertible Bond Based on Integration of Support Vector Machine and Copula Function
As a kind of hybrid financial instrument, the pricing of convertible bond (CB) has constituted a great challenge. This paper developed a novel method integrating support vector machine (SVM) with copula function. Different from existing single-factor or bifactor pricing models based on corporate value and the underlying stock price respectively, this model can effectively deal with many constrains on the CB pricing, such as nonlinearity, departure from normality, multivariate joint distribution, variable dependence structure, and so on. In particularly, the new model exhibited great flexibility in that copula function can portray dependence structure between the underlying stock price and interest rate, and that SVM can further tackle nonlinear relationship among variables. Empirical analysis showed that the proposed model enhanced generation ability of out-of-sample, with mark increase in CB pricing accuracy compared with the single SVM, and that the CB value sensitivity to the underlying stock and the dependence structure is also measured handily and effectively through the model.
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