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Improved Trend Following Trading Model by Recalling Past Strategies in Derivatives Market

机译:通过回顾衍生品市场过去的策略,改善交易模式下的趋势

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Unlike financial forecasting, trend following (TF) doesn't predict any market movement; instead it identifies a trend at early time of the day, and trades automatically afterwards by a pre-defined strategy regardless of the moving market directions during run time. Trend following trading has a long and successful history among speculators. The traditional TF trading method is by human judgment in setting the rules (aka the strategy). Subsequently the TF strategy is executed in pure objective operational manner. Finding the correct strategy at the beginning is crucial in TF. This usually involves human intervention in first identifying a trend, and configuring when to place an order and close it out, when certain conditions are met. In this paper, we proposed a Trend Recalling model that operates in a computer system. It works by partially matching the current trend with one of the proven successful patterns from the past. Our experiments based on real stock market data show that this method has an edge over the other trend following methods in profitability. The results show that TF however is still limited by market fluctuation (volatility), and the ability to identify trend signal.
机译:与财务预测不同,趋势遵循(TF)不会预测任何市场运动;相反,它在一天的早期识别趋势,并且在运行时的运行市场方向时,通过预定义的策略自动交易。交易后的趋势在投机者中具有漫长而成功的历史。传统的TF交易方法是通过人类判断制定规则(AKA策略)。随后,TF策略以纯粹的客观运行方式执行。在开头找到正确的策略对于TF至关重要。这通常涉及人为干预首次识别趋势,并且在满足某些条件时配置何时何时下订单并关闭它。在本文中,我们提出了一种在计算机系统中运行的趋势回忆模型。它通过部分与过去的成熟成功模式部分地匹配当前趋势。我们的实验基于实际股票市场数据表明,这种方法在盈利能力方面的其他趋势上有一个边缘。结果表明,TF仍然受到市场波动(波动性)的限制,以及识别趋势信号的能力。

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