Stock price prediction is a challenging task, but machine learning methods have recently been used successfully for this purpose. In this paper, we extract over 270 hand-crafted features (factors) inspired by technical and quantitative analysis and tested their validity on short-term mid-price movement prediction. We focus on a wrapper feature selection method using entropy, least-mean squares, and linear discriminant analysis. We also build a new quantitative feature based on adaptive logistic regression for online learning, which is constantly selected first among the majority of the proposed feature selection methods. This study examines the best combination of features using high frequency limit order book data from Nasdaq Nordic. Our r...
The purpose of this paper is to compare the performance of various state-of-the-art machine learning...
Predicting the future of a stock price is a difficult task due to the high level of randomness in t...
2nd International Afro-European Conference for Industrial Advancement (AECIA) -- SEP 09-11, 2015 -- ...
Stock price prediction is a challenging task, in which machine learning methods have recently been s...
The increasing complexity of financial trading in recent years revealed the need for methods that ca...
In this study, we examine existing stock market prediction algorithms before proposing new ones. We ...
The stock market moves a large amount of wealth between individuals and institutions daily. Forty mi...
Abstract In stock market forecasting, the identification of critical features that affect the perfor...
Since the stock market is one of the most important areas for investors, stock market price trend pr...
With the advent of technological marvels like global digitization, the prediction of the stock marke...
Stock market trading is an activity in which investors need fast and accurate information to make ef...
Deep learning for predicting stock market prices and trends has become even more popular than before...
Stock prediction has been a popular area of research. It is challenging due to the dynamic, chaoti...
With the development of science and technology, people pay more attention to predicting the price of...
<p>In the dynamic world of financial markets, accurate price predictions are essential for inf...
The purpose of this paper is to compare the performance of various state-of-the-art machine learning...
Predicting the future of a stock price is a difficult task due to the high level of randomness in t...
2nd International Afro-European Conference for Industrial Advancement (AECIA) -- SEP 09-11, 2015 -- ...
Stock price prediction is a challenging task, in which machine learning methods have recently been s...
The increasing complexity of financial trading in recent years revealed the need for methods that ca...
In this study, we examine existing stock market prediction algorithms before proposing new ones. We ...
The stock market moves a large amount of wealth between individuals and institutions daily. Forty mi...
Abstract In stock market forecasting, the identification of critical features that affect the perfor...
Since the stock market is one of the most important areas for investors, stock market price trend pr...
With the advent of technological marvels like global digitization, the prediction of the stock marke...
Stock market trading is an activity in which investors need fast and accurate information to make ef...
Deep learning for predicting stock market prices and trends has become even more popular than before...
Stock prediction has been a popular area of research. It is challenging due to the dynamic, chaoti...
With the development of science and technology, people pay more attention to predicting the price of...
<p>In the dynamic world of financial markets, accurate price predictions are essential for inf...
The purpose of this paper is to compare the performance of various state-of-the-art machine learning...
Predicting the future of a stock price is a difficult task due to the high level of randomness in t...
2nd International Afro-European Conference for Industrial Advancement (AECIA) -- SEP 09-11, 2015 -- ...