基于长短期记忆和人工神经网络的股票市场预测

J.Aruna Jasmine, S. Srinivasan, M. Godson, T. Rani, S. Sakthy
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引用次数: 0

摘要

本文阐述了利用人工神经网络(ANN)对机构股票市场趋势进行预测的方法。长短期记忆(LSTM)与简单的神经网络相结合,给出了股票市场中公司股价变动的结果。LSTM用于处理时间序列数据。LSTM是递归神经网络(RNN)的一种。在这项工作中,被称为堆叠LSTM的LSTM网络层是处理大量时间序列数据的核心组件。LSTM模型像人类大脑一样工作,因为它有短期和长期记忆的能力。在训练阶段的数据处理过程中,模型对数据中可用的日期与股票价格之间的关系保持短期记忆。然后,它开始跟踪自公司成立以来的连续日期和股票价格之间的关系。在这个阶段,模型试图在股票价格运动中找到一种模式或趋势。这被保存在长期记忆中。随着模型处理更多的数据,它发现了股票价格变动的准确模式。准确的日期或天数作为输入,股票价格作为模型的输出
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Share Market Prediction Using Long Short Term Memory and Artificial Neural Network
This paper explains prediction of share market trends of organizations using Artificial Neural Network (ANN). The Long Short Term Memory (LSTM) incorporated with a simple neural network gives the result of the movement of company's stock prices in the share market. LSTM is used for processing the time-series data. LSTM is a type of Recurrent Neural Network (RNN). In this work, layers of LSTM networks called stacked LSTM is a core component that process the huge volume of time series data. LSTM model works like a human brain because of the power to have a short term and long term memory. During data processing in the training stage, the model keeps a short term memory of the relation between the date and stock prices which is available in the data. It then starts keeping track of the relations from the successive dates and stock prices since the inception of the company. In this stage, the model tries to find a pattern or a trend in the stock price movement. This is kept in the long term memory. As the model processes further data, it finds an accurate pattern in the stock price movement. The exact date or a number of days is given as input and the stock price is given as output from the model
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