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A pattern representation of stock time series based on DTW

机译:基于DTW的库存时间序列的模式表示

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Time series analysis based on pattern discovery has received a lot of interests in the fields of economic physics and machine learning due to its simplicity and ability to reveal complex nonlinear behavior in stock market. Dynamic Time Warping (DTW) is a useful tool to extract morphological characteristics of time series for its capacity to cope with time shifts and warpings. In this paper, we propose a new time series representation method for stock time series based on dynamic time warping (DTW) called PR-DTW. A combinatorial optimization model with strict constraints is built to get the pattern representation of stock time series. To simplify the calculation, we construct another unconstrained global optimization problem whose optimal solution includes the optimal solution of the original combinatorial optimization problem based on a theorem proved in this paper. Particle Swarm Optimization algorithm is used to solve the global optimization problem, then the results can be converted into the optimal solution of the combinatorial optimization problem through a few simple formulas given in the theorem. The results of three classifiers (1NN, Decision Tree, Multi-layer Perceptron) implemented on 15 sectors in Chinese A-share market unanimously demonstrate that PR-DTW has the capability of extracting time series short-term patterns which is widely regarded as difficulty. And we conclude that PR-DTW has the capability of prevention of End Effect, anti-noise and segmentation. Moreover, by extracting the top ten patterns predicting stock's rise and fall in short term (10 days) according to the ranking of stock's rising probability in the next three days, we find out the short-term patterns obtained by PR-DTW have prospective directive to the stock trend analysis in short term. (C) 2020 Elsevier B.V. All rights reserved.
机译:由于其在股票市场中揭示复杂的非线性行为的简单性和能力,基于模式发现的时间序列分析在经济物理和机器学习领域得到了很多兴趣。动态时间翘曲(DTW)是提取时间序列的形态特征的有用工具,以便其应对时间换档和扭曲的能力。在本文中,我们提出了一种基于动态时间翘曲(DTW)的库存时间序列的新时序序列表示方法,称为PR-DTW。建立了严格约束的组合优化模型,以获得库存时间序列的模式表示。为了简化计算,我们构建另一个不受约束的全局优化问题,其最优解决方案包括基于本文证明的定理的原始组合优化问题的最佳解决方案。粒子群优化算法用于解决全局优化问题,然后通过定理中给出的几种简单公式将结果转换为组合优化问题的最佳解决方案。在中国A股市场的15个扇区上实施的三个分类器(1NN,决定树,多层的Merceptron)的结果一致证明PR-DTW具有提取时间序列的短期模式的能力,这些短期模式被广泛被视为难以。我们得出结论,PR-DTW具有预防最终效应,抗噪声和分割的能力。此外,通过提取预测股票上涨的十大模式,根据未来三天的股票上升概率的排名,我们发现了Pr-DTW获得的短期模式具有预期指令短期股价分析。 (c)2020 Elsevier B.v.保留所有权利。

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