Classical Review On Stock Prognosis Using Long Short Term Memory

K. Praneetha, Perela Narayana Nithesh, Pinni Venkata Sai Sumanth Kumar, T. Vignesh
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Abstract

The main plot of this project is to compare different methods that primarily finds the stock prediction. There are so many machine learning and neurocomputing fields to predict the stock values. Stock price forecasting uses machine learning effectively. Various learning methods are available, including Moving Average (MA), K-nearest Neighbors (KNN), LSTM (Long Short Term Memory), and ARIMA.. LSTM is a type of ANN and RNN neural networks. Because in deep learning they are capable of storing the data in memory. But out of this Long Short-Term Memory(LSTM) is unique compares with other. Because it is used to create long term memory. LSTM performs better in big datasets. It has more additional space to store longer information and it stores longer period of time. While compare to other techniques they can’t store more data like LSTM does. In LSTM we use visualization method so, it is easy to compare the data and find the accuracy value. we used apple and google company datasets to perform LSTM. And here in the papers which we used as reference they performed on datasets namely- Chinese stock market data, Yahoo finance dataset(900000), BSE stocks Tick data, LM SCG, 4 year data of NASDAQ,100 stock market data of NASDAQ stocks. LSTM method gave us best accurate value so we choose LSTM method from others. The main objective of this paper is to find the accurate value of stock market using machine learning through best method out of all available. so we choose LSTM method.
基于长短期记忆的股票预测经典综述
这个项目的主要情节是比较不同的方法,主要找到库存预测。有很多机器学习和神经计算领域可以预测股票价值。股票价格预测有效地利用了机器学习。有多种学习方法,包括移动平均(MA)、k近邻(KNN)、LSTM(长短期记忆)和ARIMA。LSTM是ANN和RNN神经网络的一种。因为在深度学习中,它们能够将数据存储在内存中。但在这方面,长短期记忆(LSTM)与其他记忆相比是独特的。因为它是用来建立长期记忆的。LSTM在大数据集中表现更好。它有更多的额外空间来存储更长的信息,它可以存储更长的时间。但与其他技术相比,它们不能像LSTM那样存储更多的数据。在LSTM中,我们采用了可视化的方法,便于对数据进行比较,找到精度值。我们使用苹果和谷歌公司的数据集来执行LSTM。在我们作为参考的论文中,他们对数据集进行了研究,即中国股市数据,雅虎金融数据集(900000),BSE股票Tick数据,LM SCG,纳斯达克4年数据,纳斯达克100个股票市场数据。LSTM方法能给出最准确的数值,因此我们选择了LSTM方法。本文的主要目标是利用机器学习在所有可用的方法中通过最佳方法找到股票市场的准确价值。所以我们选择LSTM方法。
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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