股票市场指数价格动态衍生状态空间的马尔可夫过程建模

Bohan Li
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引用次数: 0

摘要

我们探索并对比了两种不同的方法来提取股票市场时间序列数据演变的离散预测模型。具体而言,构建模型的两种方法是:一种是将常用的“空心烛台”框架应用于日水平的时间序列数据,并将结果输入R中的马尔可夫链推理模块;第二,将流行的技术指标“斐波那契扩展水平”应用于过滤后的时间序列数据,然后将价格走势转录成一个序列,并输入相同的马尔可夫链推理模块。尽管连续时间随机模型在计算交易行业和计量经济学学者中得到了很好的研究和广泛的应用,但本质上离散的模型在专业和业余交易者中仍然非常受欢迎。在本文中,我们着手将正式的统计方法应用于两个离散的交易模型,以更好地理解它们的预测能力和效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Markov Process Modeling on Derived State Spaces of the Price Dynamics of Stock Market Indices
We explore and contrast two distinct ways of extracting discrete predictive models for the evolution of stock market time-series data. In particular, the two methods for constructing models are one, applying the commonly used “hollow candlestick” framework to the time series data on the daily level and feeding the result into a Markov chain inference module in R; two, applying the popular technical indicator “Fibonacci extension levels” to a filtered time-series data, then transcribing the price movements into a sequence to be fed into the same Markov chain inference module. Whereas continuous-time stochastic models are well studied and widely deployed in the computational trading industry and among econometrics scholars, models that are discrete in nature remain extremely popular among professional and amateur traders. In this paper, we set out to apply formal statistical methods to two discrete trading models to gain a better understanding of their predictive power and utility.
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