动态交易策略中波动机制的结构聚类

Q3 Mathematics
A. Prakash, Nick James, Max Menzies, Gilad Francis
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引用次数: 19

摘要

本文提出了一种新的方法,通过对金融时间序列的波动结构进行无监督学习,来寻找非平稳金融时间序列中波动机制的数量。我们使用变化点检测将时间序列划分为局部平稳的片段,然后计算片段分布之间的距离矩阵。通过一个优化程序,将这些片段聚类成一个学习到的离散波动区。利用这一框架,我们确定了金融指数、大盘股、交易所交易基金和货币对的波动性聚类结构。我们的方法克服了实现许多参数状态切换模型所需的刚性假设,同时有效地将时间序列提取为几个特征行为。我们的结果提供了这些时间序列的显著简化和对波动率先前行为的强有力的描述性分析。最后,我们创建并验证了一种动态交易策略,该策略可以学习时间序列当前分布与其过去制度之间的最优匹配,从而在当前做出在线风险规避决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structural Clustering of Volatility Regimes for Dynamic Trading Strategies
ABSTRACT We develop a new method to find the number of volatility regimes in a nonstationary financial time series by applying unsupervised learning to its volatility structure. We use change point detection to partition a time series into locally stationary segments and then compute a distance matrix between segment distributions. The segments are clustered into a learned number of discrete volatility regimes via an optimization routine. Using this framework, we determine the volatility clustering structure for financial indices, large-cap equities, exchange-traded funds and currency pairs. Our method overcomes the rigid assumptions necessary to implement many parametric regime-switching models while effectively distilling a time series into several characteristic behaviours. Our results provide a significant simplification of these time series and a strong descriptive analysis of prior behaviours of volatility. Finally, we create and validate a dynamic trading strategy that learns the optimal match between the current distribution of a time series and its past regimes, thereby making online risk-avoidance decisions at present.
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来源期刊
Applied Mathematical Finance
Applied Mathematical Finance Economics, Econometrics and Finance-Finance
CiteScore
2.30
自引率
0.00%
发文量
6
期刊介绍: The journal encourages the confident use of applied mathematics and mathematical modelling in finance. The journal publishes papers on the following: •modelling of financial and economic primitives (interest rates, asset prices etc); •modelling market behaviour; •modelling market imperfections; •pricing of financial derivative securities; •hedging strategies; •numerical methods; •financial engineering.
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