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Trading Algorithms Built with Directional Changes

机译:具有方向性变化的交易算法

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摘要

Algorithm trading has become more and more important to financial markets. Most existing algorithms use time series as input. Instead of relying on physical time, Directional Changes (DC) focus on the price reversion events where the reversion reaches a certain magnitude, which is referred to as the threshold. In this paper, we propose two trading algorithms based on DC - TA1 and TA2. TA1 is also based on the Average Overshoot Length scaling law (AOL). An Overshoot refers to the event of price continuing to change in the current direction before the next reversion takes place. The AOL states that on average the Overshoot length is approximately equal to the threshold of DC. We have designed two DC based trading algorithms: TA1 takes advantage of the AOL and T2 takes profit with a more conservative criteria. By testing the algorithms with five stock market indices, the results suggest that in most scenarios, the algorithms are able to generate a positive outcome. The input arguments can be changed in order to change the performance of the algorithms, so TA1 and TA2 could be tailored to trade in different markets.
机译:算法交易对金融市场变得越来越重要。现有的大多数算法都将时间序列用作输入。方向变化(DC)不再依赖于实际时间,而是关注价格返还事件,其中返还达到一定幅度,这称为阈值。在本文中,我们提出了两种基于DC的交易算法-TA1和TA2。 TA1还基于平均过冲长度缩放定律(AOL)。过冲是指在下一次恢复价格之前,价格在当前方向上继续变化的事件。 AOL指出,平均而言,超调长度大约等于DC的阈值。我们设计了两种基于DC的交易算法:TA1利用AOL优势,T2利用更为保守的准则获利。通过用五种股票市场指数测试算法,结果表明,在大多数情况下,该算法都能产生积极的结果。可以更改输入参数以更改算法的性能,因此可以针对TA1和TA2量身定制以在不同的市场进行交易。

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