This report analyzes new and existing stock market prediction techniques. Traditional technical analysis was combined with various machine-learning approaches such as artificial neural networks, k-nearest neighbors, and decision trees. Experiments we conducted show that technical analysis together with machine learning can be used to profitably direct an investor’s trading decisions. We are measuring the profitability of experiments by calculating the percentage weekly return for each stock entity under study. Our algorithms and simulations are developed using Python. The technical analysis methodology combined with machine learning algorithms show promising results which we discuss in this report
This project is aiming to use artificial neural network to predict and analyze the trend of stock pr...
Stock market is a promising financial investment that can generate great wealth. However, the volati...
The use of neural network as an investment tool is relatively new in today's financial world. There ...
There has been a growing interest in applying neural networks and technical analysis indicators for ...
Recent studies reflect a growing interest in applying neural networks to answer stock behavior. Most...
In this study, we examine existing stock market prediction algorithms before proposing new ones. We ...
This paper presents a study of artificial neural nets for use in stock index forecasting. The data f...
Neural Networks are very good in learning patterns from a lot of information. Thus, it is generally ...
The stock market forecast includes forecasting the future value of the company's shares or other fin...
This paper investigates the method of predicting stock price trends using rule-based neural network...
This paper presents computational approach for stock market prediction. Artificial Neural Network (A...
There have been multiple attempts to predict stock returns using machine learning, which have largel...
The fundamental hypothesis of this paper is that certain trends exist in stock market data that, if ...
In this work, we propose and investigate a series of methods to predict stock market movements. Thes...
This project is aiming to use artificial neural network to predict and analyze the trend of stock pr...
This project is aiming to use artificial neural network to predict and analyze the trend of stock pr...
Stock market is a promising financial investment that can generate great wealth. However, the volati...
The use of neural network as an investment tool is relatively new in today's financial world. There ...
There has been a growing interest in applying neural networks and technical analysis indicators for ...
Recent studies reflect a growing interest in applying neural networks to answer stock behavior. Most...
In this study, we examine existing stock market prediction algorithms before proposing new ones. We ...
This paper presents a study of artificial neural nets for use in stock index forecasting. The data f...
Neural Networks are very good in learning patterns from a lot of information. Thus, it is generally ...
The stock market forecast includes forecasting the future value of the company's shares or other fin...
This paper investigates the method of predicting stock price trends using rule-based neural network...
This paper presents computational approach for stock market prediction. Artificial Neural Network (A...
There have been multiple attempts to predict stock returns using machine learning, which have largel...
The fundamental hypothesis of this paper is that certain trends exist in stock market data that, if ...
In this work, we propose and investigate a series of methods to predict stock market movements. Thes...
This project is aiming to use artificial neural network to predict and analyze the trend of stock pr...
This project is aiming to use artificial neural network to predict and analyze the trend of stock pr...
Stock market is a promising financial investment that can generate great wealth. However, the volati...
The use of neural network as an investment tool is relatively new in today's financial world. There ...