Finance is a very broad field where the uncertainty plays a central role and every financial operator have to deal with it. In this paper we propose a new method for a trend prediction on financial time series combining a Linear Piecewise Regression with a granular computing framework. A set of parameters control the behavior of the whole system, thus making their fine tuning a critical optimization task. To this aim in this paper we employ an evolutionary optimization algorithm to tackle this crucial phase. We tested our system on both synthetic benchmarking data and on real financial time series. Our tests show very good classification results on benchmarking data. Results on real data, although not completely satisfactory, are encouragin...
In this paper, several classification methods are applied for modeling financial time series with th...
Financial-economic time series distinguishes from other time series because they contain a portion o...
By systematically applying different engineering methods, difficult financial problems become approa...
Abstract—In this paper, a framework is introduced for generating human-interpretable structures, her...
This thesis summarizes knowledge in the field of time series theory, method for time series analysis...
Rule extraction is performed on three kinds of time series. The first one is stock market data. The ...
Stock market data is a high dimensional time series financial data that poses unique computational c...
A genetic algorithm (GA) is a search technique that falls within the inter-section of optimization a...
Time series prediction, especially in the case of financial time series, has attractedmajor research...
Assume there exists information in past data that relates to future trends. This is the case with ou...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
We utilize a recently developed genetic algorithm, in conjunction with discrete wavelets, for carryi...
In recent years, machine learning algorithms have become increasingly popular in financial forecasti...
The ability to predict the financial market is beneficial not only to the individual but also to the...
The prediction of financial time series to enable improved portfolio management is a complex topic t...
In this paper, several classification methods are applied for modeling financial time series with th...
Financial-economic time series distinguishes from other time series because they contain a portion o...
By systematically applying different engineering methods, difficult financial problems become approa...
Abstract—In this paper, a framework is introduced for generating human-interpretable structures, her...
This thesis summarizes knowledge in the field of time series theory, method for time series analysis...
Rule extraction is performed on three kinds of time series. The first one is stock market data. The ...
Stock market data is a high dimensional time series financial data that poses unique computational c...
A genetic algorithm (GA) is a search technique that falls within the inter-section of optimization a...
Time series prediction, especially in the case of financial time series, has attractedmajor research...
Assume there exists information in past data that relates to future trends. This is the case with ou...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
We utilize a recently developed genetic algorithm, in conjunction with discrete wavelets, for carryi...
In recent years, machine learning algorithms have become increasingly popular in financial forecasti...
The ability to predict the financial market is beneficial not only to the individual but also to the...
The prediction of financial time series to enable improved portfolio management is a complex topic t...
In this paper, several classification methods are applied for modeling financial time series with th...
Financial-economic time series distinguishes from other time series because they contain a portion o...
By systematically applying different engineering methods, difficult financial problems become approa...