Research on Pricing Methods of Convertible Bonds Based on Deep Learning GAN Models

IF 2.1 Q2 BUSINESS, FINANCE
Gui Ren, Tao Meng
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引用次数: 0

Abstract

This paper proposes two data-driven models (including LSTM pricing model, WGAN pricing model) and an improved model of LSM based on GAN to analyze the pricing of convertible bonds. In addition, the LSM model with higher precision in traditional pricing model is selected for comparative study with other pricing models. It is found that the traditional LSM pricing model has a large error in the first-day pricing, and the pricing function needs to be further improved. Among the four pricing models, LSTM pricing model and WGAN pricing model have the best pricing effect. The WGAN pricing model is better than the LSTM pricing model (0.21%), and the LSM improved model (1.17%) is better than the traditional LSM model (2.26%). Applying the generative deep learning model GAN to the pricing of convertible bonds can circumvent the harsh preconditions of assumptions, and significantly improve the pricing effect of the traditional model. The scope of application of each model is different. Therefore, this paper proves the feasibility of the GAN model applied to the pricing of convertible bonds, and enriches the pricing function of derivatives in the financial field.
基于深度学习 GAN 模型的可转换债券定价方法研究
本文提出了两个数据驱动模型(包括 LSTM 定价模型、WGAN 定价模型)和一个基于 GAN 的改进 LSM 模型,用于分析可转换债券的定价。此外,还选择了传统定价模型中精度较高的 LSM 模型与其他定价模型进行比较研究。研究发现,传统的 LSM 定价模型在首日定价时误差较大,定价功能有待进一步完善。在四种定价模型中,LSTM 定价模型和 WGAN 定价模型的定价效果最好。WGAN定价模型优于LSTM定价模型(0.21%),LSM改进模型(1.17%)优于传统LSM模型(2.26%)。将生成式深度学习模型GAN应用于可转债定价,可以规避苛刻的前提假设条件,显著提高传统模型的定价效果。每种模型的适用范围不同。因此,本文证明了GAN模型应用于可转债定价的可行性,丰富了金融领域衍生品的定价功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.70
自引率
8.70%
发文量
100
审稿时长
11 weeks
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