In this paper, a hybrid approach to stock market forecasting is presented. It entails utilizing a mixture of hybrid experts, each expert embedding a genetic classifier coupled with an artificial neural network. Information retrieved from technical analysis is supplied as input to genetic classifiers, while past stock market prices - together with other relevant data - are used as input to neural networks. In this way it is possible to implement a strategy that resembles the one used by human experts. In particular, genetic classifiers based on technical-analysis domain knowledge are used to identify quasi-stationary regimes within the financial data series, whereas neural networks are designed to perform context-dependent predictions. For t...
We introduce a novel predictive statistical modeling technique called Hybrid Radial Basis Function N...
This paper surveys recent literature in the area of Neural Network, Data Mining, Hidden Markov Model...
Recent studies reflect a growing interest in applying neural networks to answer stock behavior. Most...
In this paper, a hybrid approach to stock market forecasting is presented. It entails utilizing a mi...
In this paper, a new approach for time series forecasting is presented. The forecasting activity res...
This paper investigates the method of predicting stock price trends using rule-based neural network...
Financial markets are characterized by uncertainty, which is associated with the future progress of ...
This paper presents computational approach for stock market prediction. Artificial Neural Network (A...
The presented rigorosis thesis is focused on the stock markets returns analysis using a new type of ...
Stock market prediction has been an area of great interest to financial researchers and practitioner...
In recent years, neural networks have become increasingly popular in making stock market predictions...
The stock market is a stochastic, dynamic environment and is in constant evolution, and its predicti...
Using volatility of stock price index by investor caused prediction of stock price index to be consi...
Neural networks are commonly used methods in stock market predictions. From the earlier studies in t...
The 21st century is seeing technological advances that make it possible to build more robust and sop...
We introduce a novel predictive statistical modeling technique called Hybrid Radial Basis Function N...
This paper surveys recent literature in the area of Neural Network, Data Mining, Hidden Markov Model...
Recent studies reflect a growing interest in applying neural networks to answer stock behavior. Most...
In this paper, a hybrid approach to stock market forecasting is presented. It entails utilizing a mi...
In this paper, a new approach for time series forecasting is presented. The forecasting activity res...
This paper investigates the method of predicting stock price trends using rule-based neural network...
Financial markets are characterized by uncertainty, which is associated with the future progress of ...
This paper presents computational approach for stock market prediction. Artificial Neural Network (A...
The presented rigorosis thesis is focused on the stock markets returns analysis using a new type of ...
Stock market prediction has been an area of great interest to financial researchers and practitioner...
In recent years, neural networks have become increasingly popular in making stock market predictions...
The stock market is a stochastic, dynamic environment and is in constant evolution, and its predicti...
Using volatility of stock price index by investor caused prediction of stock price index to be consi...
Neural networks are commonly used methods in stock market predictions. From the earlier studies in t...
The 21st century is seeing technological advances that make it possible to build more robust and sop...
We introduce a novel predictive statistical modeling technique called Hybrid Radial Basis Function N...
This paper surveys recent literature in the area of Neural Network, Data Mining, Hidden Markov Model...
Recent studies reflect a growing interest in applying neural networks to answer stock behavior. Most...