基于LSTM深度学习模型的股票价格预测

Kavinnilaa J, Hemalatha E, M. Jacob, D. R
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引用次数: 14

摘要

在计算领域,预测股票市场不是最简单就是最难的任务。与预测相关的因素有很多,物理因素vs.生理因素,理性与非理性因素,资本主义情绪,市场等。所有这些因素结合在一起,使股票成本波动,很难准确预测。股票市场的价格在很大程度上取决于供求关系。需求量大的股票价格会上涨,而抛售量大的股票价格会下降。股票价格的波动影响投资者的看法,因此有必要预测未来的股票价格和预测股票市场价格,以作出更熟悉和准确的投资决策。我们将该领域的数据分析视为游戏规则的改变者。本文提出历史价值承受所有其他市场事件的影响,可以用来预测未来的走势。机器学习技术可以检测范式和见解,可用于构建惊人的正确预测。我们提出LSTM(长短期记忆)模型来检验股票的未来价格。本文的目的是对股票市场价格进行预测,从而做出更加熟悉和准确的投资决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stock Price Prediction Based on LSTM Deep Learning Model
Predicting the stock market is either the easiest or the toughest task in the field of computations. There are many factors related to prediction, physical factors vs. physiological, rational and irrational , capitalist sentiment, market , etc. All these aspects combine to make stock costs volatile and are extremely tough to predict with high accuracy. The prices of a stock market depend very much on demand and supply. High demand stocks will increase in price while heavy selling stocks will decrease. Fluctuations in stock prices affect investor perception and thus there is a need to predict future share prices and to predict stock market prices to make more acquaint and precise investment decisions. We examine data analysis in this domain as a game-changer. This paper proposes that historical value bears the impact of all other market events and can be used to predict future movement. Machine Learning techniques can detect paradigms and insights that can be used to construct surprisingly correct predictions. We propose the LSTM (Long Short Term Memory) model to examine the future price of a stock. This paper is to predict stock market prices to make more acquaint and precise investment decisions.
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