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Prediction of stock price movement based on daily high prices

机译:基于每日高价的股价走势预测

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摘要

Prediction of stock close price movements has attracted a lot of research interest. Using machine learning techniques, especially statistical classifiers, for day ahead forecasting of the movement of daily close prices of a broad range of several hundreds of liquid stocks is generally not very successful. We suspect that one of the reasons for failure is the relatively high volatility of prices in the last minutes before the market closes. There have been some attempts to use less volatile daily high prices instead, but the studies concentrated only on a specific non-statistical machine learning approach on a small number of specific securities. We show that incorporating statistical classifiers for day ahead daily high price movement predictions in to some simple portfolio management techniques significantly increases their performance. Tests performed on S&P 500 stocks show that such a strategy is robust, i.e. the difference in reliability for different stocks does not vary significantly, and that such a strategy greatly outperforms the S&P 500 index and several other benchmarks while increasing the risk only by a small amount.
机译:股票收盘价走势的预测吸引了许多研究兴趣。通常,使用机器学习技术(尤其是统计分类器)来对数百种流动性股票的广泛范围的每日收盘价走势进行预测不是很成功。我们怀疑失败的原因之一是市场收盘前最后几分钟的价格相对较高的波动性。有一些尝试使用波动较小的每日高价来代替,但是研究仅集中于针对少量特定证券的特定非统计机器学习方法。我们表明,将统计分类器用于一些日常的每日高价走势预测,并结合到一些简单的投资组合管理技术中,可以显着提高其性能。对标普500指数股票进行的测试表明,该策略是稳健的,即不同股票的可靠性差异不会显着变化,并且该策略大大优于标普500指数和其他几个基准,同时仅将风险小幅提高量。

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