We explored the application of a machine learning method, Logitboost, to automati-cally calibrate a trading model using different versions of the same technical analysis indicators. This approach takes advantage of boosting’s feature selection capability to select an optimal combination of technical indicators and design a new set of trad-ing rules. We tested this approach with high frequency data of the Dow Jones EURO STOXX 50 Index Futures (FESX) and the DAX Futures (FDAX) for March 2009. Our method was implemented with different learning algorithms and outperformed a combination of the same group of technical analysis indicators using the parameters typically recommended by practitioners. We incorporated this method of model calibration ...
We present a new model for prediction markets, in which we use risk measures to model agents and int...
Nowadays, machine learning usage has gained significant interest in financial time series prediction...
Although the vast majority of fundamental analysts believe that technical analysts' estimates and te...
Over the last three decades, most of the world's stock exchanges have transitioned to electronic tra...
Master's thesis in Industrial economicsThis thesis investigates how machine learning can be applied ...
The systematic trading of equities forms the basis of the Global Asset Management Industry. Analysts...
In the dynamic world of financial markets, accurate price predictions are essential for informed dec...
We present a new model for prediction markets, in which we use risk measures to model agents and in-...
The theory of technical analysis suggests that future stock price developement can be foretold by an...
Technical and quantitative analysis in financial trading use mathematical and statistical tools to h...
The purpose of the study is to confirm the feasibility of using machine learning methods to predict ...
The main goal of this thesis was to develop an automated trading system for Forex trading, which wou...
For the purpose of this research, three machine learning strategies for trading were studied and imp...
The rise of AI technology has popularized deep learning models for financial trading prediction, pro...
The potential of machine learning to automate and control nonlinear, complex systems is well establi...
We present a new model for prediction markets, in which we use risk measures to model agents and int...
Nowadays, machine learning usage has gained significant interest in financial time series prediction...
Although the vast majority of fundamental analysts believe that technical analysts' estimates and te...
Over the last three decades, most of the world's stock exchanges have transitioned to electronic tra...
Master's thesis in Industrial economicsThis thesis investigates how machine learning can be applied ...
The systematic trading of equities forms the basis of the Global Asset Management Industry. Analysts...
In the dynamic world of financial markets, accurate price predictions are essential for informed dec...
We present a new model for prediction markets, in which we use risk measures to model agents and in-...
The theory of technical analysis suggests that future stock price developement can be foretold by an...
Technical and quantitative analysis in financial trading use mathematical and statistical tools to h...
The purpose of the study is to confirm the feasibility of using machine learning methods to predict ...
The main goal of this thesis was to develop an automated trading system for Forex trading, which wou...
For the purpose of this research, three machine learning strategies for trading were studied and imp...
The rise of AI technology has popularized deep learning models for financial trading prediction, pro...
The potential of machine learning to automate and control nonlinear, complex systems is well establi...
We present a new model for prediction markets, in which we use risk measures to model agents and int...
Nowadays, machine learning usage has gained significant interest in financial time series prediction...
Although the vast majority of fundamental analysts believe that technical analysts' estimates and te...