基于LSTM-ANN的股票价格自动预测

P. Nagaraj, V. Muneeswaran, T. V. Dastagiri Reddy, B.Venu Gopal Reddy, T.Ganesh Reddy, P. Suresh
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引用次数: 0

摘要

众所周知,股票市场是不稳定的、动态的和非线性的。正确的股票价格预测是非常困难的,因为不止一个(或大或小)因素,如政治、世界经济环境、意外行为和企业的经济表现。但是,这也有潜力。有一个发现模式的统计。这让使用预先编程的自动买卖方法(即算法交易)进行交易的想法得到了提振。在海量信息的产生中,预测库存市场费用和趋势的无底知识比以前更加出名。我们积累了雅虎财经10年的记录,预测了库存市场的收费趋势,提出了基于深度学习的模型和特征工程的全面定制。计划中的答案是完整的,因为它包括准备库存以预测库存市场价格趋势,市场数据集,几种功能工程方法和定制的基于深度学习的设备组合。该模型在市场估计中达到了典型的高水平股票准确性。我们还为用户构建了一个流应用程序,使用户可以轻松访问,他们可以搜索股票报价器,我们的模型预测前100天的值,并对第101天进行详细概述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Stock Price Prediction Using LSTM-ANN
It is well known that the stock market is erratic, dynamic, and nonlinear. Correct stock price forecasting is extraordinarily difficult due to more than one (Large and small) factor, such as politics, world economic circumstances, surprising actions, and business’s economic performance. But, there’s also this has the potential. There is a statistic toward discovering patterns. This gave an upward jab to the idea of Trading using pre-programmed, automated buying and selling methods known as algorithmic trading. In the generation of massive information, bottomless knowledge for expecting inventory market expenses and tendencies has become still more famous than before. We accumulated 10 years of records from Yahoo Finance and anticipate charge trends of inventory markets, a deep learning based model and comprehensive customization of characteristic engineering are presented. The planned answer stands complete as it consists of preparing the inventory for forecasting inventory market price trends, a market dataset, several function engineering methodologies, and a customized deep learning-based device combined. The model achieves a typically high-level of stock accuracy in market estimates. We also build a streamlet application for users to easily access that they can search a stock ticker and our model predicts the previous 100 days’ values and make a detailed overview of the 101st day.
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