Machine learning algorithms dedicated to financial time series forecasting have gained a lot of interest. But choosing between several algorithms can be challenging, as their estimation accuracy may be unstable over time. Online aggregation of experts combine the forecasts of a finite set of models in a single approach without making any assumption about the models. In this paper, a Bernstein Online Aggregation (BOA) procedure is applied to the construction of long-short strategies built from individual stock return forecasts coming from different machine learning models. The online mixture of experts leads to attractive portfolio performances even in environments characterised by non-stationarity. The aggregation outperforms individual alg...
Nowadays, machine learning usage has gained significant interest in financial time series prediction...
Nowadays, Financial Markets represent a crucial part of the world economy. Financial Markets have gr...
Combining unbiased forecasts of continuous variables necessarily reduces the error variance below th...
Learning with expert advice as a scheme of on-line learning has been very successfully applied to va...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
International audienceMachine learning algorithms and big data are transforming all industries inclu...
This paper discusses the problem of selecting model parameters in time series forecasting using aggr...
this paper are neural networks whose forecasts are combined by another neural network, a gate. For r...
This paper considers a portfolio trading strategy formulated by algorithms in the field of machine l...
Machine learning, as a subtopic of artificial intelligence, has powerfully been applied in multiple ...
Financial markets forecasting represents a challenging task for a series of reasons, such as the irr...
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
In recent years, machine learning algorithms have become increasingly popular in financial forecasti...
Many of the sophisticated models for stock return forecasting and portfolio optimisation cannot beat...
The unpredictability and volatility of the stock market render it challenging to make a substantial ...
Nowadays, machine learning usage has gained significant interest in financial time series prediction...
Nowadays, Financial Markets represent a crucial part of the world economy. Financial Markets have gr...
Combining unbiased forecasts of continuous variables necessarily reduces the error variance below th...
Learning with expert advice as a scheme of on-line learning has been very successfully applied to va...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
International audienceMachine learning algorithms and big data are transforming all industries inclu...
This paper discusses the problem of selecting model parameters in time series forecasting using aggr...
this paper are neural networks whose forecasts are combined by another neural network, a gate. For r...
This paper considers a portfolio trading strategy formulated by algorithms in the field of machine l...
Machine learning, as a subtopic of artificial intelligence, has powerfully been applied in multiple ...
Financial markets forecasting represents a challenging task for a series of reasons, such as the irr...
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
In recent years, machine learning algorithms have become increasingly popular in financial forecasti...
Many of the sophisticated models for stock return forecasting and portfolio optimisation cannot beat...
The unpredictability and volatility of the stock market render it challenging to make a substantial ...
Nowadays, machine learning usage has gained significant interest in financial time series prediction...
Nowadays, Financial Markets represent a crucial part of the world economy. Financial Markets have gr...
Combining unbiased forecasts of continuous variables necessarily reduces the error variance below th...