Statistical arbitrage exploits temporal price differences between similar assets. We develop a unifying conceptual framework for statistical arbitrage and a novel data driven solution. First, we construct arbitrage portfolios of similar assets as residual portfolios from conditional latent asset pricing factors. Second, we extract their time series signals with a powerful machine-learning time-series solution, a convolutional transformer. Lastly, we use these signals to form an optimal trading policy, that maximizes risk-adjusted returns under constraints. Our comprehensive empirical study on daily US equities shows a high compensation for arbitrageurs to enforce the law of one price. Our arbitrage strategies obtain consistently high out-of...
At the moment, there is a large volume of literature on exchange trading. Obviously, every year the ...
Online Oct. 2016 Indicateurs 2016International audienceIn recent years, machine learning research ha...
This thesis consists of three applications of machine learning techniques to empirical asset pricing...
International audienceMachine learning algorithms and big data are transforming all industries inclu...
Machine learning techniques have recently become the norm for detecting patterns in financial market...
Nowadays, machine learning usage has gained significant interest in financial time series prediction...
The article of record as published may be found at https://doi.org/10.14311/NNW.2019.29.011Deep-lear...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
A method to buy and sell in markets based on predefined rules to make trading decisions is a market-...
Can we train a stock trading bot that can take decisions in high-entropy envi- ronments like stock m...
Forecasting the behavior of the stock market is a classic but difficult topic, one that has attracte...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
We test a statistical arbitrage trading strategy, pairs trading, using daily closing prices covering...
At the moment, there is a large volume of literature on exchange trading. Obviously, every year the ...
Online Oct. 2016 Indicateurs 2016International audienceIn recent years, machine learning research ha...
This thesis consists of three applications of machine learning techniques to empirical asset pricing...
International audienceMachine learning algorithms and big data are transforming all industries inclu...
Machine learning techniques have recently become the norm for detecting patterns in financial market...
Nowadays, machine learning usage has gained significant interest in financial time series prediction...
The article of record as published may be found at https://doi.org/10.14311/NNW.2019.29.011Deep-lear...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
A method to buy and sell in markets based on predefined rules to make trading decisions is a market-...
Can we train a stock trading bot that can take decisions in high-entropy envi- ronments like stock m...
Forecasting the behavior of the stock market is a classic but difficult topic, one that has attracte...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
We test a statistical arbitrage trading strategy, pairs trading, using daily closing prices covering...
At the moment, there is a large volume of literature on exchange trading. Obviously, every year the ...
Online Oct. 2016 Indicateurs 2016International audienceIn recent years, machine learning research ha...
This thesis consists of three applications of machine learning techniques to empirical asset pricing...