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Dynamic mode decomposition for financial trading strategies

机译:金融交易策略的动态模式分解

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摘要

We demonstrate the application of an algorithmic trading strategy based upon the recently developed dynamic mode decomposition on portfolios of financial data. The method is capable of characterizing complex dynamical systems, in this case financial market dynamics, in an equation-free manner by decomposing the state of the system into low-rank terms whose temporal coefficients in time are known. By extracting key temporal coherent structures (portfolios) in its sampling window, it provides a regression to a best fit linear dynamical system, allowing for a predictive assessment of the market dynamics and informing an investment strategy. The data-driven analytics capitalizes on stock market patterns, either real or perceived, to inform buy/sell/hold investment decisions. Critical to the method is an associated learning algorithm that optimizes the sampling and prediction windows of the algorithm by discovering trading hot-spots. The underlying mathematical structure of the algorithms is rooted in methods from nonlinear dynamical systems and shows that the decomposition is an effective mathematical tool for data-driven discovery of market patterns.
机译:我们展示了基于最近开发的金融数据组合动态模式分解算法交易策略的应用。该方法能够通过将系统状态分解为时间系数已知的低阶项,以无方程式的方式来表征复杂的动态系统,在这种情况下为金融市场动态。通过在其采样窗口中提取关键的时间相干结构(投资组合),它可以提供对最合适的线性动力学系统的回归,从而可以对市场动态进行预测性评估并提供投资策略。数据驱动的分析利用实际或可感知的股市模式来为购买/出售/持有投资决策提供依据。该方法的关键是相关的学习算法,该算法通过发现交易热点来优化算法的采样和预测窗口。该算法的基本数学结构源于非线性动力学系统的方法,表明分解是用于数据驱动的市场格局发现的有效数学工具。

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