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Improving Robustness of a SVR Based Algorithm Trading Model with Carefully Crafted Features and a Diversified Portfolio

机译:精心设计的功能和多样化的产品组合提高基于SVR的算法交易模型的鲁棒性

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Algorithm trading is to use computer programs to automate trading. Our goal is to improve the robustness of a SVR based algorithm trading model for short term trades. Robustness of a trading model means that the profit curve of the model has low volatility without sudden sizable ups and downs. (1) Firstly, we carefully craft some features for prediction of stock price in short term future, based on commonly used indicators to capture typical price movement patterns, overbought/oversold, and divergence situations. The features are normalized before being used to train the SVR based trading model to generalize the model to all stocks. (2) Secondly, we design a portfolio diversifying method based on the trading model. Correlations between stocks in a portfolio can compromise profitability of an algorithm trading model. Prices of stocks with strong correlations move in the same direction. If the trading model predicts price movement in the wrong direction, stop loss will be triggered and these stocks will cause loss in a mutual accelerated manner. We propose a method to improve diversity of the portfolio. Stocks are clustered into different groups using a similarity measure based on historical performances of the trading model on the stocks, and the portfolio is built by selecting stocks from different groups. (3) Experimental results show that our trading model can earn an excess return compared to risk free fixed savings. And the volatility of the profit curve of the trading model is reduced, which means that robustness of the trading model is improved.
机译:算法交易是使用计算机程序自动进行交易。我们的目标是为短期交易提高基于SVR的算法交易模型的鲁棒性。交易模型的稳健性意味着该模型的收益曲线波动性低,并且不会突然出现大幅度的起伏。 (1)首先,我们基于常用的指标来捕获典型的价格走势模式,超买/超卖和背离情况,精心设计了一些短期股票价格预测功能。在用于训练基于SVR的交易模型以将模型推广到所有股票之前,对功能进行了标准化。 (2)其次,设计了基于交易模型的投资组合多元化方法。投资组合中的股票之间的相关性可能会损害算法交易模型的盈利能力。具有强相关性的股票价格朝同一方向移动。如果交易模型预测价格向错误的方向移动,则会触发止损,这些股票将以相互加速的方式造成损失。我们提出了一种改善投资组合多样性的方法。根据股票交易模型的历史表现,使用相似性度量将股票分为不同的组,并通过从不同组中选择股票来构建投资组合。 (3)实验结果表明,与无风险的固定储蓄相比,我们的交易模型可以赚取超额收益。并且减少了交易模型的利润曲线的波动性,这意味着交易模型的鲁棒性得到了提高。

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