In recent years, algorithmic and high-frequency trading have been the subject of increasing risk concerns. A general theme that we adopt in this thesis is that trading practitioners are predominantly interested in risk-adjusted performance. Likewise, regulators are demanding stricter risk controls. First, we scrutinise conventional AI model design approaches with the aim to increase the risk-adjusted trading performance of the proposed fuzzy logic models. We show that applying risk-return objective functions and accounting for transaction costs improve out-of-sample results. Our experiments identify that neuro-fuzzy models exhibit superior performance stability across multiple risk regimes when compared to popular neural network models i...
The present study deals with heterogeneous learning rules in speculative markets where heuristic str...
Standard financial techniques neglect extreme situations and regards large market shifts as too unli...
Standard financial techniques neglect extreme situations and regards large market shifts as too unli...
In this paper, we investigate the ability of higher order fuzzy systems to handle increased uncertai...
Whilst the interest of many former studies on the application of AI in finance is solely on predicti...
The majority of existing artificial intelligence (AI) studies in computational finance literature ar...
Technical analysis of financial markets involves analyzing past price movements in order to identify...
This thesis presents a novel neural-fuzzy network architecture named the evolving Mamdani-Takagi-Sug...
Traditional statistical analysis is oriented towards finding linear relationships between the variab...
This paper is motivated by the aspect of uncertainty in financial decision making, and how artificia...
Copyright © 2008 IEEEThis paper describes an adaptive computational intelligence system for learning...
In this work we are proposing a trading system where fuzzy logic is applied not only for defining th...
The development of new models that would enhance predictability for time series with dynamic time-va...
This chapter describes a computational intelligence system for portfolio management and provides a c...
The proposed paper demonstrates that a hybrid fuzzy neural network can serve as a risk classifier of...
The present study deals with heterogeneous learning rules in speculative markets where heuristic str...
Standard financial techniques neglect extreme situations and regards large market shifts as too unli...
Standard financial techniques neglect extreme situations and regards large market shifts as too unli...
In this paper, we investigate the ability of higher order fuzzy systems to handle increased uncertai...
Whilst the interest of many former studies on the application of AI in finance is solely on predicti...
The majority of existing artificial intelligence (AI) studies in computational finance literature ar...
Technical analysis of financial markets involves analyzing past price movements in order to identify...
This thesis presents a novel neural-fuzzy network architecture named the evolving Mamdani-Takagi-Sug...
Traditional statistical analysis is oriented towards finding linear relationships between the variab...
This paper is motivated by the aspect of uncertainty in financial decision making, and how artificia...
Copyright © 2008 IEEEThis paper describes an adaptive computational intelligence system for learning...
In this work we are proposing a trading system where fuzzy logic is applied not only for defining th...
The development of new models that would enhance predictability for time series with dynamic time-va...
This chapter describes a computational intelligence system for portfolio management and provides a c...
The proposed paper demonstrates that a hybrid fuzzy neural network can serve as a risk classifier of...
The present study deals with heterogeneous learning rules in speculative markets where heuristic str...
Standard financial techniques neglect extreme situations and regards large market shifts as too unli...
Standard financial techniques neglect extreme situations and regards large market shifts as too unli...