利用人工神经网络提高移动平均指标的技术分析效率

M. S. Jaafar
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摘要

投资的技术方法,本质上反映了一种观点,即价格的走势是由投资者对各种经济、货币、政治和心理力量的态度变化所决定的。股票价格对经济变量变化的响应各不相同,使得交易决策非常复杂。效率指的是使用成本最小化的投入比产生可接受的产出水平的能力。因此,在技术分析中,效率指的是指标指示进入和退出市场获利的良好时机的能力。效率水平由实际产出比与预期产出比表示。实际产出比与预期产出比越高,指标的效率水平越高。本研究考察了几个技术指标,发现没有一个指标达到效率水平。为了提高这一水平,本研究应用了具有学习价格和移动平均形态能力的人工神经网络模型,并在效率水平上提出了一个比以前更好的新形态。本研究发现,与传统技术分析相比,这种改进不仅提高了效率,而且增加了每个选定时期的交易数量,从而增加了投资者进入和退出市场的决策变化,从而有可能获得更好的利润。
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Technical Analysis Efficiency Enhancement in Moving Average Indicator Through Artificial Neural Network
The technical approach to investment, essentially a reflection of an idea that prices move in trends which are determined by the changing attitudes of investors towards a variety of economy, monetary, political and psychological forces). The response of stock prices towards the changes in economic variables vary from one to another, hence, it makes trading decision to be very complex. Efficiency refers to the ability to produce an acceptable level of output using cost-minimizing input ratio. Thus, in technical analysis, efficiency refers to the ability of the indicators to indicate a good timing of entry and out of the market with profit. The levels of efficiencies are shown by actual output ratios versus expected output ratios. The higher the actual output ratios against the expected output ratios, the higher the efficiency level of the indicators. This research investigates several technical indicators and found none of the indicators reached the efficiency level. To improve the level, this study applies the Artificial Neural Network model that capable to learn the price and the moving average patterns and suggests a new pattern better than the previous, in term of efficiency level. This research found that the improvements are not just to the efficiency but also increase number of trading as per selected period hence, increase the changes of investor decisions to enter and to exit from the market with possibility of a better profit as compared to traditional technical analysis.
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