220 likes | 387 Views
Bartosz Kozłowski, kozlow@iiasa.ac.at. Wavelet transform oriented methodologies with applications to time series analysis. Wavelet Analysis (WA) Filtration Approximation Periodicity Identification Forecasting. International Institute for Applied Systems Analysis
E N D
Bartosz Kozłowski, kozlow@iiasa.ac.at Wavelet transform oriented methodologies with applications to time series analysis Wavelet Analysis (WA) Filtration Approximation Periodicity Identification Forecasting International Institute for Applied Systems Analysis Institute of Control and Computation Engineering, WUT
Wavelets’ Background • Foundations • Time and Frequency • Inversible
Originalsignal Originalsignal WT WT Originalwaveletcoefficients Originalwaveletcoefficients Analysis Newsignal Newsignal Inverse WT Analysis Newwaveletcoefficients Analysis with WT
Characteristics Fast Spatial Localization Frequency Localization Energy Applications Acoustics Economics Geology Health Care Image Processing Management Data Mining ... WA Background
Another Forecasts’ Accuracy Measure • How many times (%) the method correctly forecasted the raise / fall of the time series • Direct Wavelet Approach for Shares • ~55% • Seasonal Wavelet Approach for Sales • ~75%
Summary • Allow to use standard approaches and combine them • Various application domains • Open possibilities for new approaches • Provide multiresolutional analysis • Do not increase computational order of complexity • Improve results