Mining Stock Price Changes for Profitable Trade Using Candlestick Chart Patterns

Yoshihisa Udagawa
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引用次数: 3

Abstract

One major technical analysis of stock price fluctuation is the use of candlestick charts. This paper proposes a model with six parameters to retrieve similar candlestick patters to improve accuracy of stock price predictions. Because criteria that trigger reversing trade largely affect gains and losses, we examine two criteria; one based on sum of negative stock price changes and the other on sum of negative 5-day average differences. The proposed retrieval algorithm and criteria are evaluated through simulations in terms of gains and losses using NASDAQ's daily stock data. The results of simulations indicate that the proposed method leads to a trade decision that opportunities of successful stock trades are effectively above that of failure ones with several percentage of gains. Simulations also show that high risks deliver high returns. The results are examined statistically by the regression analysis suggesting the significant capabilities of the proposed method to predict stock price fluctuations.
利用烛台图模式挖掘股票价格变化获利交易
股票价格波动的一个主要技术分析是使用烛台图。本文提出了一个具有六个参数的模型来检索相似的烛台模式,以提高股票价格预测的准确性。由于触发贸易逆转的标准在很大程度上影响收益和损失,我们研究了两个标准;一个基于负股价变化的总和,另一个基于负5天平均差异的总和。利用纳斯达克的每日股票数据,通过模拟收益和损失来评估所提出的检索算法和标准。仿真结果表明,所提出的方法使股票交易成功的机会有效地高于失败的交易机会,并有几个百分比的收益。模拟还表明,高风险带来高回报。通过回归分析对结果进行了统计检验,表明所提出的方法具有预测股价波动的显著能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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