Prediction of stock price is one of the most challenging tasks due to nonlinear nature of the stock data. Though numerous attempts have been made to predict the stock price by applying various techniques, yet the predicted price is not always accurate and even the error rate is high to some extent. Consequently, this paper endeavours to determine an efficient stock prediction strategy by implementing a combinatorial method of Grey Wolf Optimizer (GWO), Clustering and Non Linear Autoregressive Exogenous (NARX) Technique. The study uses stock data from prominent stock market i.e. New York Stock Exchange (NYSE), NASDAQ and emerging stock market i.e. Malaysian Stock Market (Bursa Malaysia), Dhaka Stock Exchange (DSE). It applies K-means cluster...
In this paper, we propose a Long short-term memory (LSTM) and Adaptive Grey Wolf Optimization (GWO)-...
Abstract Nowadays, investment in the bource organizes the important part of country economy. So the ...
Prediction of stock prices is useful for investors to understand how investments is suitable into o...
Prediction of stock price is one of the most challenging tasks due to nonlinear nature of the stock ...
The stock market is non-linear in nature, making forecasting a very complicated, challenging and unc...
Forecasting the future price of a stock on the stock exchange is a difficult task. Stock exchange is...
Abstract — Stock market values keeps on changing day by day, so it is very difficult to predict the ...
The nonlinearity of the stock market is widely accepted all over the world and to reveal such non-li...
This paper describes performance of different classifiers (established/combinations/new prediction m...
This paper explore neural network method for predicting the stock market which much-needed accuracy....
Stock market predictions are one of the challenging tasks for financial investors across the globe. ...
Stock prices are volatile due to different factors that are involved in the stock market, such as ge...
This paper presents computational approach for stock market prediction. Artificial Neural Network (A...
With the development of social economy, people pay more and more attention to investment and financi...
Stock market prediction is essential and of great interest because successful prediction of stock pr...
In this paper, we propose a Long short-term memory (LSTM) and Adaptive Grey Wolf Optimization (GWO)-...
Abstract Nowadays, investment in the bource organizes the important part of country economy. So the ...
Prediction of stock prices is useful for investors to understand how investments is suitable into o...
Prediction of stock price is one of the most challenging tasks due to nonlinear nature of the stock ...
The stock market is non-linear in nature, making forecasting a very complicated, challenging and unc...
Forecasting the future price of a stock on the stock exchange is a difficult task. Stock exchange is...
Abstract — Stock market values keeps on changing day by day, so it is very difficult to predict the ...
The nonlinearity of the stock market is widely accepted all over the world and to reveal such non-li...
This paper describes performance of different classifiers (established/combinations/new prediction m...
This paper explore neural network method for predicting the stock market which much-needed accuracy....
Stock market predictions are one of the challenging tasks for financial investors across the globe. ...
Stock prices are volatile due to different factors that are involved in the stock market, such as ge...
This paper presents computational approach for stock market prediction. Artificial Neural Network (A...
With the development of social economy, people pay more and more attention to investment and financi...
Stock market prediction is essential and of great interest because successful prediction of stock pr...
In this paper, we propose a Long short-term memory (LSTM) and Adaptive Grey Wolf Optimization (GWO)-...
Abstract Nowadays, investment in the bource organizes the important part of country economy. So the ...
Prediction of stock prices is useful for investors to understand how investments is suitable into o...