Assimilation of principal component analysis and wavelet with kernel support vector regression for medium-term financial time series forecasting
Entities and institutional financiers have gained a lot of growth from financial time series forecasting in recent times. But the major challenges of financial time series data are the high noise and complexity of its nature. Researchers in recent times have successfully engaged the application of s...
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my.utm.873352020-11-08T03:55:22Z http://eprints.utm.my/id/eprint/87335/ Assimilation of principal component analysis and wavelet with kernel support vector regression for medium-term financial time series forecasting Alhassan, Baba Gimba Yusof, Fadhilah Norrulashikin, Siti Mariam Q Science (General) Entities and institutional financiers have gained a lot of growth from financial time series forecasting in recent times. But the major challenges of financial time series data are the high noise and complexity of its nature. Researchers in recent times have successfully engaged the application of support vector regression (SVR) to conquer this challenge. In this study principal component analysis (PCA) is applied to extract the low dimensionality and efficient feature information, while wavelet is used to pre-process the extracted features in other to nu1llify the influence of the noise in the features with a KSVR based forecasting model. The analysis is carried out based on the quarterly tax revenue data of 39 years from the first quarter of 1981 to the last quarter of 2016. The forecasting is made for ten quarters ahead. The initial empirical result shows that the multicollinearity has been reduced to zero (0), and the analytic result reveals that the proposed model PCA-W-KSVR outperforms KSVR, PCA-KSVR, and W-KSVR in terms of MAE, MAPE, MSE and RMSE. Lattice Science Publication 2020-03 Article PeerReviewed Alhassan, Baba Gimba and Yusof, Fadhilah and Norrulashikin, Siti Mariam (2020) Assimilation of principal component analysis and wavelet with kernel support vector regression for medium-term financial time series forecasting. International Journal of Management and Humanities (IJMH), 4 (7). pp. 40-48. ISSN 2394-0913 https://www.ijmh.org/download/volume-4-issue-7/ |
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Q Science (General) Alhassan, Baba Gimba Yusof, Fadhilah Norrulashikin, Siti Mariam Assimilation of principal component analysis and wavelet with kernel support vector regression for medium-term financial time series forecasting |
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Entities and institutional financiers have gained a lot of growth from financial time series forecasting in recent times. But the major challenges of financial time series data are the high noise and complexity of its nature. Researchers in recent times have successfully engaged the application of support vector regression (SVR) to conquer this challenge. In this study principal component analysis (PCA) is applied to extract the low dimensionality and efficient feature information, while wavelet is used to pre-process the extracted features in other to nu1llify the influence of the noise in the features with a KSVR based forecasting model. The analysis is carried out based on the quarterly tax revenue data of 39 years from the first quarter of 1981 to the last quarter of 2016. The forecasting is made for ten quarters ahead. The initial empirical result shows that the multicollinearity has been reduced to zero (0), and the analytic result reveals that the proposed model PCA-W-KSVR outperforms KSVR, PCA-KSVR, and W-KSVR in terms of MAE, MAPE, MSE and RMSE. |
format |
Article |
author |
Alhassan, Baba Gimba Yusof, Fadhilah Norrulashikin, Siti Mariam |
author_facet |
Alhassan, Baba Gimba Yusof, Fadhilah Norrulashikin, Siti Mariam |
author_sort |
Alhassan, Baba Gimba |
title |
Assimilation of principal component analysis and wavelet with kernel support vector regression for medium-term financial time series forecasting |
title_short |
Assimilation of principal component analysis and wavelet with kernel support vector regression for medium-term financial time series forecasting |
title_full |
Assimilation of principal component analysis and wavelet with kernel support vector regression for medium-term financial time series forecasting |
title_fullStr |
Assimilation of principal component analysis and wavelet with kernel support vector regression for medium-term financial time series forecasting |
title_full_unstemmed |
Assimilation of principal component analysis and wavelet with kernel support vector regression for medium-term financial time series forecasting |
title_sort |
assimilation of principal component analysis and wavelet with kernel support vector regression for medium-term financial time series forecasting |
publisher |
Lattice Science Publication |
publishDate |
2020 |
url |
http://eprints.utm.my/id/eprint/87335/ https://www.ijmh.org/download/volume-4-issue-7/ |
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1683230756337352704 |