This research paper proposes a novel method, Exponential Moving Average Long Short-Term Memory (EMA LSTM), for multi-step vector output prediction of time series data using deep learning. The method combines the LSTM with the exponential moving average (EMA) technique to reduce noise in the data and improve the accuracy of prediction. The research compares the performance of EMA LSTM to other commonly used deep learning models, including LSTM, GRU, RNN, and CNN, and evaluates the results using statistical tests. The dataset used in this study contains daily stock market prices for several years, with inputs of 60, 90, and 120 previous days, and predictions for the next 20 and 30 days. The results show that the EMA LSTM method outperforms ot...
Time series forecasting using historical data is significantly important nowadays. Many fields such ...
The challenging task of predicting stock value need a solid algorithmic framework to determine longe...
A stock forecasting and trading system is a complex information system because a stock trading syste...
Time series data is considered very useful in the domains of business, finance and economics. Stock ...
Deep learning models have been widely used in prediction problems in various scenarios and have show...
This study attempts to predict stock index prices using multivariate time series analysis. The study...
In finance, many phenomena are modeled as time series. This thesis investigates time series forecast...
Stock prediction is an exciting issue and is very much needed by investors and business people to de...
With advancements in machine-learning techniques, stock-price movements can ostensibly be forecasted...
The study proposes the use of a stacked Long-Short-Term Memory (LSTM) model to predict the KSE-100 s...
Accurate prediction of stock prices plays an increasingly prominent role in the stock market where r...
The author uses a Long Short-Term Memory Network (LSTM), a deep learning algorithm, which is designe...
Stock price data have the characteristics of time series. At the same time, based on machine learnin...
The article aims to find the best time series predictive model, considering the minimization of erro...
Investing, buying or selling on the stock exchange demands data analytical expertise and skill. Beca...
Time series forecasting using historical data is significantly important nowadays. Many fields such ...
The challenging task of predicting stock value need a solid algorithmic framework to determine longe...
A stock forecasting and trading system is a complex information system because a stock trading syste...
Time series data is considered very useful in the domains of business, finance and economics. Stock ...
Deep learning models have been widely used in prediction problems in various scenarios and have show...
This study attempts to predict stock index prices using multivariate time series analysis. The study...
In finance, many phenomena are modeled as time series. This thesis investigates time series forecast...
Stock prediction is an exciting issue and is very much needed by investors and business people to de...
With advancements in machine-learning techniques, stock-price movements can ostensibly be forecasted...
The study proposes the use of a stacked Long-Short-Term Memory (LSTM) model to predict the KSE-100 s...
Accurate prediction of stock prices plays an increasingly prominent role in the stock market where r...
The author uses a Long Short-Term Memory Network (LSTM), a deep learning algorithm, which is designe...
Stock price data have the characteristics of time series. At the same time, based on machine learnin...
The article aims to find the best time series predictive model, considering the minimization of erro...
Investing, buying or selling on the stock exchange demands data analytical expertise and skill. Beca...
Time series forecasting using historical data is significantly important nowadays. Many fields such ...
The challenging task of predicting stock value need a solid algorithmic framework to determine longe...
A stock forecasting and trading system is a complex information system because a stock trading syste...