计算机科学
库存(枪支)
股票价格
人工智能
循环神经网络
短时记忆
人工神经网络
股东
计量经济学
机器学习
财务
经济
系列(地层学)
工程类
生物
古生物学
机械工程
公司治理
作者
Md. Arif Istiake Sunny,Mirza Mohd Shahriar Maswood,Abdullah G. Alharbi
出处
期刊:2020 2nd Novel Intelligent and Leading Emerging Sciences Conference (NILES)
日期:2020-10-24
卷期号:: 87-92
被引量:184
标识
DOI:10.1109/niles50944.2020.9257950
摘要
In the financial world, the forecasting of stock price gains significant attraction. For the growth of shareholders in a company's stock, stock price prediction has a great consideration to increase the interest of speculators for investing money to the company. The successful prediction of a stock's future cost could return noteworthy benefit. Different types of approaches are taken in forecasting stock trend in the previous years. In this research, a new stock price prediction framework is proposed utilizing two popular models; Recurrent Neural Network (RNN) model i.e. Long Short Term Memory (LSTM) model, and Bi-Directional Long Short Term Memory (BI-LSTM) model. From the simulation results, it can be noted that using these RNN models i.e. LSTM, and BI-LSTM with proper hyper-parameter tuning, our proposed scheme can forecast future stock trend with high accuracy. The RMSE for both LSTM and BI-LSTM model was measured by varying the number of epochs, hidden layers, dense layers, and different units used in hidden layers to find a better model that can be used to forecast future stock prices precisely. The assessments are conducted by utilizing a freely accessible dataset for stock markets having open, high, low, and closing prices.
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