We examine the use of deep learning (neural networks) to predict the movement of the S&P 500 Index using past returns of all the stocks in the index. Our analysis finds that the future direction of the S&P 500 index can be weakly predicted by the prior movements of the underlying stocks in the index, but not strongly enough to reject market efficiency. Decomposition of the prediction error indicates that most of the lack of predictability comes from randomness and only a little from nonstationarity. We believe this is the first test of S&P 500 market efficiency that uses a very large information set, and it extends the domain of weak-form market efficiency tests
This research explores the application of four deep learning architectures—Multilayer Perceptron (ML...
We offer a systematic analysis of the use of deep learning networks for stock market analysis and pr...
Online Oct. 2016 Indicateurs 2016International audienceIn recent years, machine learning research ha...
We examine the use of deep learning (neural networks) to predict the movement of the S&P 500 Ind...
We predict daily out-of sample directional movements of the constituent stocks of the Oslo Stock Exc...
Objective: This study's main goal is to investigate how deep learning approaches may be used to anal...
In this study, we examine existing stock market prediction algorithms before proposing new ones. We ...
There have been multiple attempts to predict stock returns using machine learning, which have largel...
In this study, deep learning will be used to test the predictability of stock trends. Stock markets ...
Various deep learning techniques that have been used to improve on an existing technical analysis me...
The experiment performed showed that predicting stock movements accurately with a neural networks is...
Although the vast majority of fundamental analysts believe that technical analysts' estimates and te...
Although the vast majority of fundamental analysts believe that technical analysts' estimates and te...
The emergence of artificial neural networks has given us some of the most impressive technological t...
According to the forecast of stock price trends, investors trade stocks. In recent years, many resea...
This research explores the application of four deep learning architectures—Multilayer Perceptron (ML...
We offer a systematic analysis of the use of deep learning networks for stock market analysis and pr...
Online Oct. 2016 Indicateurs 2016International audienceIn recent years, machine learning research ha...
We examine the use of deep learning (neural networks) to predict the movement of the S&P 500 Ind...
We predict daily out-of sample directional movements of the constituent stocks of the Oslo Stock Exc...
Objective: This study's main goal is to investigate how deep learning approaches may be used to anal...
In this study, we examine existing stock market prediction algorithms before proposing new ones. We ...
There have been multiple attempts to predict stock returns using machine learning, which have largel...
In this study, deep learning will be used to test the predictability of stock trends. Stock markets ...
Various deep learning techniques that have been used to improve on an existing technical analysis me...
The experiment performed showed that predicting stock movements accurately with a neural networks is...
Although the vast majority of fundamental analysts believe that technical analysts' estimates and te...
Although the vast majority of fundamental analysts believe that technical analysts' estimates and te...
The emergence of artificial neural networks has given us some of the most impressive technological t...
According to the forecast of stock price trends, investors trade stocks. In recent years, many resea...
This research explores the application of four deep learning architectures—Multilayer Perceptron (ML...
We offer a systematic analysis of the use of deep learning networks for stock market analysis and pr...
Online Oct. 2016 Indicateurs 2016International audienceIn recent years, machine learning research ha...