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An intelligent pattern recognition model for supporting investment decisions in stock market

机译:支持股票市场投资决策的智能模式识别模型

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For many years, how to make stock market predictions has been a prevalent research topic. To carry out accurate forecasting, stock analysts and academic researchers have tried various analysis techniques, algorithms, and models. For example, "technical analysis" is a popular approach used by common stock investors to analyze market trend, and Artificial Intelligence (AI) algorithms such as genetic algorithms (GAs), neural network (NN), and fuzzy time-series (FTS), were proposed by researchers to forecast the future stock index. Although the daily forecasts are very useful for professional investors who implement intraday trading, we argue that forecasting a bullish turning point is a more interesting issue than the future stock index for common investor because an accurate forecast will bring a huge amount of stock return. Therefore, this paper proposes an intelligent pattern recognition model, based on two new stock pattern recognition methods, "PIP bull-flag pattern matching" and the "floating-weighted bull-flag template," to recognize a bull-flag stock pattern. The bull-flag pattern is a stock's turning point with proper timing, which can enable a stock investor to profit. To promote recognition accuracy, the proposed model employs chart patterns and technical indicators, simultaneously, as pattern recognition factors. In the model verification, we evaluate the proposed model with stock returns by forecasting two stock databases (TAIEX and NASDAQ), and comparing the returns with other advanced algorithms. The experimental results indicate that the proposed model outperforms the published algorithms, such as rough set theory (RST), genetic algorithms (GAs) and their hybrid model, and gives a high-level of profitability. Additionally, the trading strategies, provided by the proposed model, also help investors to make beneficial investment decisions in the stock market. (C) 2016 Elsevier Inc. All rights reserved.
机译:多年来,如何进行股票市场预测一直是一个普遍的研究主题。为了进行准确的预测,股票分析师和学术研究人员尝试了各种分析技术,算法和模型。例如,“技术分析”是普通股投资者用来分析市场趋势的一种流行方法,而人工智能(AI)算法例如遗传算法(GA),神经网络(NN)和模糊时间序列(FTS)是由研究人员提出来预测未来的股指。尽管每日预测对进行盘中交易的专业投资者非常有用,但我们认为,对于普通投资者而言,预测看涨转折比普通股指更有趣,因为准确的预测会带来大量的股票回报。因此,本文基于两种新的股票模式识别方法,即“ PIP牛旗模式匹配”和“浮动加权牛旗模板”,提出了一种智能模式识别模型,以识别牛旗股票模式。牛市模式是具有适当时机的股票转折点,可以使股票投资者获利。为了提高识别的准确性,提出的模型同时采用图表模式和技术指标作为模式识别因素。在模型验证中,我们通过预测两个股票数据库(TAIEX和NASDAQ),并将收益与其他高级算法进行比较,来评估具有股票收益的建议模型。实验结果表明,该模型优于粗糙集理论(RST),遗传算法(GA)及其混合模型等已发表的算法,具有较高的获利能力。此外,建议的模型提供的交易策略还可以帮助投资者在股市中做出有利的投资决策。 (C)2016 Elsevier Inc.保留所有权利。

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