In this paper we examine the ability of Artificial Neural Network methods (ANN) for predicting the stock market index. We first conduct an ANN analysis and then optimize the ANN model using Particle Swarm Optimization algorithm (PSO) to improve the prediction accuracy. In terms of data, we use NASDAQ index which is one of the most widely followed indices in the United States. Empirical results show that by determining the optimal set of biases and weights using PSO, we can augment the accuracy of the ANN model for this stock market data set
This paper is focused on the development of intelligent decision making model which is based on the ...
In this paper, we propose a new hybrid learning model for stock market indices prediction by adding ...
In this paper the effect of hybrid market indicators is examined for an improved stock price predict...
Abstract Conventional statistical techniques for forecasting are constrained by the underlying seaso...
Stock prediction with data mining techniques is one of the most important issues in finance being in...
Stock prediction with data mining techniques is one of the most important issues in finance being in...
Using volatility of stock price index by investor caused prediction of stock price index to be consi...
The stock price varies depending on time, so stock market data is time-series data. The prediction o...
In this paper, a stock market prediction model was created utilizing artificial neural networks. Man...
Abstract Nowadays, investment in the bource organizes the important part of country economy. So the ...
The purpose of this paper is to review artificial neural network applications used in the field of s...
Stock market is a promising financial investment that can generate great wealth. However, the volati...
Stock market predictions are one of the challenging tasks for financial investors across the globe. ...
Abstract — Stock market analysis is one of the most important and hard problems in finance analysis ...
Artificial Neural Network (ANN) is an effective machine learning technique for addressing regression...
This paper is focused on the development of intelligent decision making model which is based on the ...
In this paper, we propose a new hybrid learning model for stock market indices prediction by adding ...
In this paper the effect of hybrid market indicators is examined for an improved stock price predict...
Abstract Conventional statistical techniques for forecasting are constrained by the underlying seaso...
Stock prediction with data mining techniques is one of the most important issues in finance being in...
Stock prediction with data mining techniques is one of the most important issues in finance being in...
Using volatility of stock price index by investor caused prediction of stock price index to be consi...
The stock price varies depending on time, so stock market data is time-series data. The prediction o...
In this paper, a stock market prediction model was created utilizing artificial neural networks. Man...
Abstract Nowadays, investment in the bource organizes the important part of country economy. So the ...
The purpose of this paper is to review artificial neural network applications used in the field of s...
Stock market is a promising financial investment that can generate great wealth. However, the volati...
Stock market predictions are one of the challenging tasks for financial investors across the globe. ...
Abstract — Stock market analysis is one of the most important and hard problems in finance analysis ...
Artificial Neural Network (ANN) is an effective machine learning technique for addressing regression...
This paper is focused on the development of intelligent decision making model which is based on the ...
In this paper, we propose a new hybrid learning model for stock market indices prediction by adding ...
In this paper the effect of hybrid market indicators is examined for an improved stock price predict...