伊藤微积分-机器学习预测美元-加纳塞迪远期汇率

Paul A. Agbodza
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引用次数: 1

摘要

本文实现了CMSVJD的基本解决方案来模拟跳跃条件下的美元/GHS远期汇率。CMSVJD在本研究中被推广到包括“无跳跃”和“简化参数”的条件。该模型同时捕捉随机波动和跳跃。随机微积分建模和机器学习接口是投机者和图表分析师在加纳银行间市场(前沿市场)驱动价格的答案。用R语言编写代码进行仿真并绘制结果。使用5倍交叉验证来创建测试样本数据,作为验证模型性能所需的转发率的代理。由此产生的机器产生远期美元/GHS汇率的预测结果,均方误差为0.169%和0.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ito Calculus-Machine Learning Projection of Forward US Dollar-Ghana Cedi Rates
In this paper the fundamental solution to CMSVJD is implemented to simulate USD/GHS forward exchange rates under the condition of jumps. CMSVJD was generalized in this study to include conditions of ‘no jump’ and ‘reduced parameters’. The model captures both stochastic volatility and jumps. Stochastic calculus modeling and machine learning interface is the answer to speculators and chartists driving prices in the Ghana interbank market (a frontier market). Codes written in R were used for simulation and plot of results. A 5-fold cross validation was used to create the test sample data, as proxy for forward rates required to validate the performance of the model. The resultant machine yields a predictive result of forward USD/GHS rates with a mean squared error of 0.169% and 0.5%.
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