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Regression genetic programming for estimating trend end in foreign exchange market

机译:用于估计外汇市场趋势结束的回归遗传规划

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Most forecasting algorithms use a physical time scale for studying price movement in financial markets, making the flow of physical time discontinuous. The use of a physical time scale can make companies oblivious to significant activities in the market, which poses a risk. Directional changes is a different and newer approach, which uses an event-based time scale. This approach summarises data into alternating trends called upward directional change and downward directional change. Each of these trends are further dismembered into directional change (DC) event and overshoot (OS) event. We present a genetic programming (GP) algorithm that evolves equations that express linear and non-linear relationships between the length of DC and OS events in a given dataset. This allows us to have an expectation when a trend will reverse, which can lead to increased profitability. This novel trend reversal estimation approach is then used as part of a DC-based trading strategy. We aim to appraise whether the new knowledge can lead to greater excess return. We assess the efficiency of the modified trading strategy on 250 different directional changes datasets from five different thresholds and five different currency pairs, consisting of intraday data from the foreign exchange (Forex) spot market. Results show that our algorithm is able to return profitable trading strategies and statistically outperform state-of-the-art financial trading strategies, such as technical analysis, buy and hold and other DC-based trading strategies.
机译:大多数预测算法使用物理时间标度来研究金融市场中的价格变动,从而使物理时间流不连续。使用物理时间标度可以使公司忽略市场中的重大活动,从而构成风险。方向更改是一种不同的新方法,它使用基于事件的时间标度。这种方法将数据汇总为交替的趋势,称为向上方向变化和向下方向变化。这些趋势中的每一个都进一步分解为方向变化(DC)事件和超调(OS)事件。我们提出了一种遗传编程(GP)算法,该算法可以演化表示在给定数据集中DC和OS事件的长度之间线性和非线性关系的方程式。这使我们可以预期趋势何时会逆转,从而可以提高获利能力。然后,将这种新颖的趋势逆转估计方法用作基于DC的交易策略的一部分。我们旨在评估新知识是否可以带来更大的超额收益。我们从五个不同的阈值和五个不同的货币对(包括来自外汇(Forex)现货市场的日内数据)组成的250个不同方向变化数据集中,评估了修改后的交易策略的效率。结果表明,我们的算法能够返回有利可图的交易策略,并且在统计上优于最新的金融交易策略,例如技术分析,购买和持有以及其他基于DC的交易策略。

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