Price movements in financial markets are well known to be very noisy. As a result, even if there are, on occasion, exploitable patterns that could be picked up by machine-learning algorithms, these are obscured by feature and label noise rendering the predictions less useful, and risky in practice. Traditional rule-learning techniques developed for noisy data, such as CN2, would seek only high precision rules and refrain from making predictions where their antecedents did not apply. We apply a similar approach, where a model abstains from making a prediction on data points that it is uncertain on. During training, a cascade of such models are learned in sequence, similar to rule lists, with each model being trained only on data on which the...
[eng] The presented discourse followed several topics where every new chapter introduced an economic...
We report new results about the impact of noise on information processing with application to financ...
Technical and quantitative analysis in financial trading use mathematical and statistical tools to h...
Machine Learning (ML) for finance is a fruitful approach to detect patterns in data. However, when i...
Predictive models in regression and classification problems typically have a single model that cover...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
The unparalleled success of machine learning is indisputable. It has transformed the world with unim...
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
Many modern computational approaches to classical problems in quantitative finance are formulated as...
Financial time series forecasting is a popular application of machine learning methods. Previous stu...
We study how financial predictions can be used in learning algorithms for problems such as portfolio...
Machine learning techniques have recently become the norm for detecting patterns in financial market...
Financial market forecasting remains a formidable challenge despite the surge in computational capab...
AbstractWhat we learned from the global financial crisis is that to get information about the underl...
High accuracy forecasts are essential to financial risk management, where machine learning algorithm...
[eng] The presented discourse followed several topics where every new chapter introduced an economic...
We report new results about the impact of noise on information processing with application to financ...
Technical and quantitative analysis in financial trading use mathematical and statistical tools to h...
Machine Learning (ML) for finance is a fruitful approach to detect patterns in data. However, when i...
Predictive models in regression and classification problems typically have a single model that cover...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
The unparalleled success of machine learning is indisputable. It has transformed the world with unim...
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
Many modern computational approaches to classical problems in quantitative finance are formulated as...
Financial time series forecasting is a popular application of machine learning methods. Previous stu...
We study how financial predictions can be used in learning algorithms for problems such as portfolio...
Machine learning techniques have recently become the norm for detecting patterns in financial market...
Financial market forecasting remains a formidable challenge despite the surge in computational capab...
AbstractWhat we learned from the global financial crisis is that to get information about the underl...
High accuracy forecasts are essential to financial risk management, where machine learning algorithm...
[eng] The presented discourse followed several topics where every new chapter introduced an economic...
We report new results about the impact of noise on information processing with application to financ...
Technical and quantitative analysis in financial trading use mathematical and statistical tools to h...