In algorithmic trading applications, a large number of co-evolving financial data streams are observed and analyzed. A recurrent and important task is to determine how a given stream depends on others, over time, accounting for dynamic dependence patterns and without imposing any probabilistic law governing this dependence. We demonstrate how Flexible Least Squares (FLS), a penalized version of ordinary least squares that accommodates for dynamic regression coefficients, can be deployed successfully in this context. We describe a market-neutral algorithmic trading system based on a combined use of on-line feature extraction and recursive regression. The system has been proved to perform successfully when trading the S&P 500 Futures Index
The PhD dissertation research topics aim at developing algorithmic trading strategies and demonstrat...
Many real world applications of association rule mining from large databases help users make better ...
It is difficult to make money through the stock market. Even most professional hedge funds lose mone...
In algorithmic trading applications, a large number of co-evolving financial data streams are observ...
A number of recent emerging applications call for studying data streams, potentially infinite flows ...
Abstract. Automated trading systems for financial markets can use data mining techniques for future ...
This thesis is concerned with the analysis of adaptive incremental regression algorithms for data st...
Buy cheap and sell more expensive. This is the main principle to make a profit on capital markets fo...
Over the last three decades, most of the world's stock exchanges have transitioned to electronic tra...
Financial markets are a source of non-stationary multidimensional time series which has been drawing...
Stream analysis is considered as a crucial component of strategic control over a broad variety of di...
Financial markets are a source of non-stationary multidimensional time series which has been drawing...
Automated trading systems for financial markets can use data mining techniques for future price move...
Nowadays, machine learning usage has gained significant interest in financial time series prediction...
abstract: With the coming advances of computational power, algorithmic trading has become one of the...
The PhD dissertation research topics aim at developing algorithmic trading strategies and demonstrat...
Many real world applications of association rule mining from large databases help users make better ...
It is difficult to make money through the stock market. Even most professional hedge funds lose mone...
In algorithmic trading applications, a large number of co-evolving financial data streams are observ...
A number of recent emerging applications call for studying data streams, potentially infinite flows ...
Abstract. Automated trading systems for financial markets can use data mining techniques for future ...
This thesis is concerned with the analysis of adaptive incremental regression algorithms for data st...
Buy cheap and sell more expensive. This is the main principle to make a profit on capital markets fo...
Over the last three decades, most of the world's stock exchanges have transitioned to electronic tra...
Financial markets are a source of non-stationary multidimensional time series which has been drawing...
Stream analysis is considered as a crucial component of strategic control over a broad variety of di...
Financial markets are a source of non-stationary multidimensional time series which has been drawing...
Automated trading systems for financial markets can use data mining techniques for future price move...
Nowadays, machine learning usage has gained significant interest in financial time series prediction...
abstract: With the coming advances of computational power, algorithmic trading has become one of the...
The PhD dissertation research topics aim at developing algorithmic trading strategies and demonstrat...
Many real world applications of association rule mining from large databases help users make better ...
It is difficult to make money through the stock market. Even most professional hedge funds lose mone...