Stock market prediction is an important area of financial forecasting, which attracts great interest to stock buyers and sellers, stock investors, policy makers, applied researchers, and many others who are involved in the capital market. In this paper, a comparative study has been conducted to predict stock index values using soft computing models and time series model. Paying attention to the applied econometric noises because our considered series are time series, we predict Chittagong stock indices for the period from January 1, 2005 to May 5, 2011. We have used well-known models such as, the genetic algorithm (GA) model and the adaptive network fuzzy integrated system (ANFIS) model as soft computing forecasting models. Very widely used...
The use of intelligent systems for stock market predictions has been widely established. In this pap...
Abstract. Time-series prediction has been a very well researched topic in recent studies. Some popul...
Two artificial intelligence techniques, neural networks and genetic algorithms, are used for stock m...
AbstractFuzzy theory is one of the newly adduced self-adaptive strategies,which is applied to dynami...
Summarization: The key to successful stock market forecasting is achieving best results with minimum...
The stock market is a complex and dynamic system with noisy, non-stationary and chaotic data series....
Today, investment by purchasing stock-share constitutes the greater part of economic exchange of cou...
To forecast a complex and non-linear system, such as a stock market, advanced artificial intelligenc...
Soft computing techniques has been effectively applied in business, engineering, medical domain to s...
Soft computing techniques has been effectively applied in business, engineering, medical domain to s...
An important financial subject that has attracted researchers’ attention for many years is forecasti...
Since the birth of the secondary stock market, the prediction of the stock price trend has become a ...
<p>Some data fluctuates rapidly in a short period of time. Classical and computational models are us...
Abstract. Knowing about future values and trend of stock market has attracted a lot of attention by ...
Due to the inherent non-linearity and non-stationary characteristics of financial stock market price...
The use of intelligent systems for stock market predictions has been widely established. In this pap...
Abstract. Time-series prediction has been a very well researched topic in recent studies. Some popul...
Two artificial intelligence techniques, neural networks and genetic algorithms, are used for stock m...
AbstractFuzzy theory is one of the newly adduced self-adaptive strategies,which is applied to dynami...
Summarization: The key to successful stock market forecasting is achieving best results with minimum...
The stock market is a complex and dynamic system with noisy, non-stationary and chaotic data series....
Today, investment by purchasing stock-share constitutes the greater part of economic exchange of cou...
To forecast a complex and non-linear system, such as a stock market, advanced artificial intelligenc...
Soft computing techniques has been effectively applied in business, engineering, medical domain to s...
Soft computing techniques has been effectively applied in business, engineering, medical domain to s...
An important financial subject that has attracted researchers’ attention for many years is forecasti...
Since the birth of the secondary stock market, the prediction of the stock price trend has become a ...
<p>Some data fluctuates rapidly in a short period of time. Classical and computational models are us...
Abstract. Knowing about future values and trend of stock market has attracted a lot of attention by ...
Due to the inherent non-linearity and non-stationary characteristics of financial stock market price...
The use of intelligent systems for stock market predictions has been widely established. In this pap...
Abstract. Time-series prediction has been a very well researched topic in recent studies. Some popul...
Two artificial intelligence techniques, neural networks and genetic algorithms, are used for stock m...