一种识别金融市场显著模式的变序制度切换模型

Philippe Chatigny, Rongbo Chen, Jean-Marc Patenaude, Shengrui Wang
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引用次数: 1

摘要

时间序列中复杂行为的识别和预测是金融数据分析领域的基本问题。自回归(AR)模型和状态切换(RS)模型已经成功地用于研究金融时间序列的行为。然而,传统的RS模型通过使用定阶马尔可夫链来评估制度,并且在其设计中没有考虑数据中的潜在模式。在本文中,我们提出了一种新的RS模型来识别和预测基于加权条件概率分布(WCPD)框架,能够发现和利用时间序列中重要的潜在模式。对200只股票市场数据的实验结果表明,金融市场行为背后的结构表现出不同的动态,可以用来更好地定义比传统模型具有更好预测能力的制度。
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A Variable-Order Regime Switching Model to Identify Significant Patterns in Financial Markets
The identification and prediction of complex behaviors in time series are fundamental problems of interest in the field of financial data analysis. Autoregressive (AR) model and Regime switching (RS) models have been used successfully to study the behaviors of financial time series. However, conventional RS models evaluate regimes by using a fixed-order Markov chain and underlying patterns in the data are not considered in their design. In this paper, we propose a novel RS model to identify and predict regimes based on a weighted conditional probability distribution (WCPD) framework capable of discovering and exploiting the significant underlying patterns in time series. Experimental results on stock market data, with 200 stocks, suggest that the structures underlying the financial market behaviors exhibit different dynamics and can be leveraged to better define regimes with superior prediction capabilities than traditional models.
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