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Forward forecast of stock prices using LSTM neural networks with statistical analysis of published messages

机译:使用LSTM神经网络对已发布消息进行统计分析的股票价格前瞻预测

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The article presents a new approach that combines two separate fields of stock exchange analysis. The aim of proposed solution is to support investors in their decisions and recommend to buy the assets which provide the greatest profits. To achieve this goal, decisive algorithms have been developed using artificial neural networks and technical analysis, which were used along with statistics that refer to the occurrence of single words in the fundamental analysis. Based on this, a model was prepared that in response gives a recommendation for future increases. The system consists of two algorithms. The first of them uses the LSTM (Long Short-Term Memory) artificial neural network. As inputs, information about the current closing price as well as technical analysis indicators along with the value of the current volume were used. The output has been specified as the closing price on the following day. In order to improve the response from the ANN (Artificial Neural Network), statistics of the occurrence of words in publications from last week were used. Subsequent signals gained much more importance if the volume of all transactions was much larger than the moving average of the last 15 periods and if the words that appeared in the last publication caused earlier increases. Additional information for the system are also data that come from Google Trends. This allows to verify the trend of interest and whether the published messages are important.
机译:本文介绍了一种新方法,该方法结合了两个单独的证券交易所分析领域。拟议解决方案的目的是支持投资者的决策,并建议购买可提供最大利润的资产。为了实现此目标,已使用人工神经网络和技术分析开发了决定性算法,并将其与在基础分析中引用单个单词出现的统计信息一起使用。在此基础上,准备了一个模型,作为对未来增长的建议。该系统由两种算法组成。他们中的第一个使用LSTM(长期短期记忆)人工神经网络。作为输入,使用了有关当前收盘价以及技术分析指标以及当前交易量值的信息。输出已指定为第二天的收盘价。为了改善来自ANN(人工神经网络)的响应,使用了上周出版物中单词出现的统计数据。如果所有交易的数量都比过去15个周期的移动平均值大得多,并且最近出版物中出现的词语引起较早的增加,则后续信号将变得更加重要。该系统的其他信息还包括来自Google趋势的数据。这可以验证感兴趣的趋势以及已发布的消息是否重要。

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