Can Machines Explain Stock Returns? Thesis Abstract Karolína Chalupová January 5, 2021 Recent research shows that neural networks predict stock returns better than any other model. The networks' mathematically complicated nature is both their advantage, enabling to uncover complex patterns, and their curse, making them less readily interpretable, which obscures their strengths and weaknesses and complicates their usage. This thesis is one of the first attempts at overcoming this curse in the domain of stock returns prediction. Using some of the recently developed machine learning interpretability methods, it explains the networks' superior return forecasts. This gives new answers to the long- standing question of which variables explain dif...
Abstract — Neural networks, as an intelligent data mining method, have been used in many different c...
Interest in financial markets has increased in the last couple of decades, among fund managers, poli...
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...
Recent research suggests that machine learning models dominate traditional linear models in predicti...
With the development of science and technology, people pay more attention to predicting the price of...
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
In the 19th century, gold diggers emigrated from Europe to North America with the hopes of a brighte...
This paper discusses the use a neural network to solve a problem of predicting stock prices. A backg...
Stock market prediction has been a hot topic lately due to advances in computer technology and econo...
The experiment performed showed that predicting stock movements accurately with a neural networks is...
The validity of the Efficient Market Hypothesis has been under severe scrutiny since several decades...
The stock market is notoriously difficult to predict, but there are two schools of thought that make...
This report analyzes new and existing stock market prediction techniques. Traditional technical anal...
Machine learning approaches to stock market forecasting have become increasingly popular th...
Abstract — Neural networks, as an intelligent data mining method, have been used in many different c...
Interest in financial markets has increased in the last couple of decades, among fund managers, poli...
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...
Recent research suggests that machine learning models dominate traditional linear models in predicti...
With the development of science and technology, people pay more attention to predicting the price of...
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
In the 19th century, gold diggers emigrated from Europe to North America with the hopes of a brighte...
This paper discusses the use a neural network to solve a problem of predicting stock prices. A backg...
Stock market prediction has been a hot topic lately due to advances in computer technology and econo...
The experiment performed showed that predicting stock movements accurately with a neural networks is...
The validity of the Efficient Market Hypothesis has been under severe scrutiny since several decades...
The stock market is notoriously difficult to predict, but there are two schools of thought that make...
This report analyzes new and existing stock market prediction techniques. Traditional technical anal...
Machine learning approaches to stock market forecasting have become increasingly popular th...
Abstract — Neural networks, as an intelligent data mining method, have been used in many different c...
Interest in financial markets has increased in the last couple of decades, among fund managers, poli...
In this study, we examine existing stock market prediction algorithms before proposing new ones. We ...