We present a forecasting algorithm based on support vector regression emphasizing thepractical benefits of wavelets for financial time series. We utilize an e ective de-noising algorithmbased on wavelets feasible under the assumption that the data is generated by a systematic pattern plusrandom noise. The learning algorithm focuses solely on the time frequency components, instead ofthe full time series, leading to a more general approach. Our findings propose how machine learningcan be useful for data science applications in combination with signal processing methods. The timefrequencydecomposition enables the learning algorithm to solely focus on periodical components thatare beneficial to the forecasting power as we drop features with low...
[[abstract]]By integrating genetic algorithm (GA)-based optimal time-scale feature extractions with ...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
We introduce a multistep-ahead forecasting methodology that combines empirical mode decomposition (E...
Financial market forecasting is a challenging problem and researchers are still exploring the ways t...
[[abstract]]This study implements a novel expert system for financial forecasting. In the first stag...
Financial markets are the biggest business platforms in the world. Therefore, financial forecasting ...
A necessidade de antecipar e identificar variações de acontecimentos apontam para uma nova direção n...
We introduce a multistep-ahead forecasting methodology that combines empirical mode decomposition (E...
[[abstract]]Traditional forecasting models are not very effective in most financial time series. To ...
Entities and institutional financiers have gained a lot of growth from financial time series forecas...
Recently, a new decomposition method known as wavelet decomposition was introduced, which is accompl...
Entities and institutional financiers have gained a lot of growth from financial time series forecas...
National audienceThis paper presents a forecasting method for time series. This method combines the ...
In recent years, wavelet transform has become very popular in many application areas such as physics...
In the prediction of (stochastic) time series, it has been common to suppose that an individual pred...
[[abstract]]By integrating genetic algorithm (GA)-based optimal time-scale feature extractions with ...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
We introduce a multistep-ahead forecasting methodology that combines empirical mode decomposition (E...
Financial market forecasting is a challenging problem and researchers are still exploring the ways t...
[[abstract]]This study implements a novel expert system for financial forecasting. In the first stag...
Financial markets are the biggest business platforms in the world. Therefore, financial forecasting ...
A necessidade de antecipar e identificar variações de acontecimentos apontam para uma nova direção n...
We introduce a multistep-ahead forecasting methodology that combines empirical mode decomposition (E...
[[abstract]]Traditional forecasting models are not very effective in most financial time series. To ...
Entities and institutional financiers have gained a lot of growth from financial time series forecas...
Recently, a new decomposition method known as wavelet decomposition was introduced, which is accompl...
Entities and institutional financiers have gained a lot of growth from financial time series forecas...
National audienceThis paper presents a forecasting method for time series. This method combines the ...
In recent years, wavelet transform has become very popular in many application areas such as physics...
In the prediction of (stochastic) time series, it has been common to suppose that an individual pred...
[[abstract]]By integrating genetic algorithm (GA)-based optimal time-scale feature extractions with ...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
We introduce a multistep-ahead forecasting methodology that combines empirical mode decomposition (E...