This research aimed to create suitable forecasting models with long-short term memory (LSTM) from time series data, the price of rubber smoked sheets (RSS3) using 2,631 data from the Rubber Authority of Thailand for the past 10 years. The data was divided into two sets: first series 2,105 data points were used to create the LSTM prediction model; second series 526 data points were used to estimate forecasting performance using the root mean square error (RMSE), the mean absolute percentage error (MAPE), and accuracy rate of the model. The results showed that the most suitable forecasting model for time series data, with a total of 9 LSTM layers comprised of 3 primary LSTMs. Each LSTM layer has the number of neurons 100, 150, and 200 to obta...
The author uses a Long Short-Term Memory Network (LSTM), a deep learning algorithm, which is designe...
Crude oil has an important role in the financial indicators of global markets and economies. The pri...
Cryptocurrencies have gained immense popularity in recent years as an emerging asset class, and thei...
This research aimed to create suitable forecasting models with long-short term memory (LSTM) from ti...
The following paper investigates the possibility of using artificial intelligence, in particular a l...
This paper applies a recurrent neural network (RNN) method to forecast cotton and oil prices. We sho...
The challenging task of predicting stock value need a solid algorithmic framework to determine longe...
Price prediction has become a major task due to the explosive increase in the number of investors. T...
Stock price data have the characteristics of time series. At the same time, based on machine learnin...
The study proposes the use of a stacked Long-Short-Term Memory (LSTM) model to predict the KSE-100 s...
Cryptocurrencies created by Nakamoto in 2009 have gained significant interest due to their potential...
Accurate prediction of stock prices plays an increasingly prominent role in the stock market where r...
Gold is one of the popular investment tools among people who are resistant to inflation. However, go...
Multivariate Time Series based forecasting is a type of forecasting that has more than one criterion...
Forecasting the stock market with deep neural networks is a trend nowadays. However, the results a...
The author uses a Long Short-Term Memory Network (LSTM), a deep learning algorithm, which is designe...
Crude oil has an important role in the financial indicators of global markets and economies. The pri...
Cryptocurrencies have gained immense popularity in recent years as an emerging asset class, and thei...
This research aimed to create suitable forecasting models with long-short term memory (LSTM) from ti...
The following paper investigates the possibility of using artificial intelligence, in particular a l...
This paper applies a recurrent neural network (RNN) method to forecast cotton and oil prices. We sho...
The challenging task of predicting stock value need a solid algorithmic framework to determine longe...
Price prediction has become a major task due to the explosive increase in the number of investors. T...
Stock price data have the characteristics of time series. At the same time, based on machine learnin...
The study proposes the use of a stacked Long-Short-Term Memory (LSTM) model to predict the KSE-100 s...
Cryptocurrencies created by Nakamoto in 2009 have gained significant interest due to their potential...
Accurate prediction of stock prices plays an increasingly prominent role in the stock market where r...
Gold is one of the popular investment tools among people who are resistant to inflation. However, go...
Multivariate Time Series based forecasting is a type of forecasting that has more than one criterion...
Forecasting the stock market with deep neural networks is a trend nowadays. However, the results a...
The author uses a Long Short-Term Memory Network (LSTM), a deep learning algorithm, which is designe...
Crude oil has an important role in the financial indicators of global markets and economies. The pri...
Cryptocurrencies have gained immense popularity in recent years as an emerging asset class, and thei...