Abstract Conventional statistical techniques for forecasting are constrained by the underlying seasonality, non-stationary and other factors. Increasingly over the past decade, Artificial intelligence (AI) methods including Artificial Neural network (ANN), Genetic Algorithm (GA), and Particle Swarm Optimization (PSO) etc. have been used successfully to perform predictions in financial markets and other areas. This study presents a hybrid inertia factor and constriction coefficient PSO-based methodology to deal with the Stock market index problem. We will demonstrate the superiority an applicability of the proposed approach by using Tehran Stock Exchange Index (TSEI) data and comparing the outcomes with other PSO methods such as: standard PS...
In this paper, a hybrid approach to stock market forecasting is presented. It entails utilizing a mi...
The stock market is a stochastic, dynamic environment and is in constant evolution, and its predicti...
In the business sector, it has always been a difficult task to predict the exact daily price of the ...
Abstract Conventional statistical techniques for forecasting are constrained by the underlying seaso...
The stock market is one of the most attractive investment choice from which a large amount of profit...
In this paper we examine the ability of Artificial Neural Network methods (ANN) for predicting the s...
In this paper, we propose a new hybrid learning model for stock market indices prediction by adding ...
Using volatility of stock price index by investor caused prediction of stock price index to be consi...
The present paper introduces a new clonal particle swarm optimisation (CPSO) and PSO techniques to d...
Abstract Nowadays, investment in the bource organizes the important part of country economy. So the ...
Stock index prediction is considered as a difficult task in the past decade. In order to predict sto...
vStock market has been one of the most influential economic phenomena in the world for many years. T...
Abstract — Stock market analysis is one of the most important and hard problems in finance analysis ...
In this paper, a hybrid approach to stock market forecasting is presented. It entails utilizing a mi...
In this paper, a hybrid approach to stock market forecasting is presented. It entails utilizing a mi...
In this paper, a hybrid approach to stock market forecasting is presented. It entails utilizing a mi...
The stock market is a stochastic, dynamic environment and is in constant evolution, and its predicti...
In the business sector, it has always been a difficult task to predict the exact daily price of the ...
Abstract Conventional statistical techniques for forecasting are constrained by the underlying seaso...
The stock market is one of the most attractive investment choice from which a large amount of profit...
In this paper we examine the ability of Artificial Neural Network methods (ANN) for predicting the s...
In this paper, we propose a new hybrid learning model for stock market indices prediction by adding ...
Using volatility of stock price index by investor caused prediction of stock price index to be consi...
The present paper introduces a new clonal particle swarm optimisation (CPSO) and PSO techniques to d...
Abstract Nowadays, investment in the bource organizes the important part of country economy. So the ...
Stock index prediction is considered as a difficult task in the past decade. In order to predict sto...
vStock market has been one of the most influential economic phenomena in the world for many years. T...
Abstract — Stock market analysis is one of the most important and hard problems in finance analysis ...
In this paper, a hybrid approach to stock market forecasting is presented. It entails utilizing a mi...
In this paper, a hybrid approach to stock market forecasting is presented. It entails utilizing a mi...
In this paper, a hybrid approach to stock market forecasting is presented. It entails utilizing a mi...
The stock market is a stochastic, dynamic environment and is in constant evolution, and its predicti...
In the business sector, it has always been a difficult task to predict the exact daily price of the ...