LASSO Regression in Consumer Price Index Malaysia
This study is aimed to determine the factors contributing to the prediction of the total Consumer Price Index (CPI) in Malaysia through model selection using LASSO regression. The outliers are identified using the leverage values and studentized deleted residuals while the multicollinearity variable...
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my.uthm.eprints.26142021-10-25T07:07:55Z http://eprints.uthm.edu.my/2614/ LASSO Regression in Consumer Price Index Malaysia Pillaya, Khuneswari Gopal Ravieb, Tivya Mohd Padzil, Siti Aisyah HB221-236 Price This study is aimed to determine the factors contributing to the prediction of the total Consumer Price Index (CPI) in Malaysia through model selection using LASSO regression. The outliers are identified using the leverage values and studentized deleted residuals while the multicollinearity variables will undergo progressive elimination based on Variance Inflation Factor (VIF) values. K-fold Cross-Validation (CV) method and Mean Square Error of Prediction (MSE(P)) were used to identify the best model. Model-building without removal of outliers (Set A), model-building with the remove outliers based on leverage points and studentized deleted residuals (Set B), model-building after removal of extreme outliers based on the boxplot (Set C) were carried out. The multicollinearity variables were removed for all the three sets. The results showed that the MSE(P) of the best LASSO model in Set C is the smallest compared to the other two sets. The nine major categories such as food and non-alcoholic beverages, alcoholic beverages and tobacco, clothing and footwear, transport, communication, recreation service and culture, education, restaurants and hotels, miscellaneous goods and services have significant contribution in prediction of the total CPI in Malaysia. 2021 Conference or Workshop Item PeerReviewed text en http://eprints.uthm.edu.my/2614/1/P12644_ff55d04e6fb954e2601fc15518ebb96f.pdf Pillaya, Khuneswari Gopal and Ravieb, Tivya and Mohd Padzil, Siti Aisyah (2021) LASSO Regression in Consumer Price Index Malaysia. In: SCIEMATHIC 2020, 1-2 December 2020, UTHM. https://doi.org/10.1063/5.0053192 |
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HB221-236 Price Pillaya, Khuneswari Gopal Ravieb, Tivya Mohd Padzil, Siti Aisyah LASSO Regression in Consumer Price Index Malaysia |
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This study is aimed to determine the factors contributing to the prediction of the total Consumer Price Index (CPI) in Malaysia through model selection using LASSO regression. The outliers are identified using the leverage values and studentized deleted residuals while the multicollinearity variables will undergo progressive elimination based on Variance Inflation Factor (VIF) values. K-fold Cross-Validation (CV) method and Mean Square Error of Prediction (MSE(P)) were used to identify the best model. Model-building without removal of outliers (Set A), model-building with the remove outliers based on leverage points and studentized deleted residuals (Set B), model-building after removal of extreme outliers based on the boxplot (Set C) were carried out. The multicollinearity variables were removed for all the three sets. The results showed that the MSE(P) of the best LASSO model in Set C is the smallest compared to the other two sets. The nine major categories such as food and non-alcoholic beverages, alcoholic beverages and tobacco, clothing and footwear, transport, communication, recreation service and culture, education, restaurants and hotels, miscellaneous goods and services have significant contribution in prediction of the total CPI in Malaysia. |
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Conference or Workshop Item |
author |
Pillaya, Khuneswari Gopal Ravieb, Tivya Mohd Padzil, Siti Aisyah |
author_facet |
Pillaya, Khuneswari Gopal Ravieb, Tivya Mohd Padzil, Siti Aisyah |
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Pillaya, Khuneswari Gopal |
title |
LASSO Regression in Consumer Price Index Malaysia |
title_short |
LASSO Regression in Consumer Price Index Malaysia |
title_full |
LASSO Regression in Consumer Price Index Malaysia |
title_fullStr |
LASSO Regression in Consumer Price Index Malaysia |
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LASSO Regression in Consumer Price Index Malaysia |
title_sort |
lasso regression in consumer price index malaysia |
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2021 |
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http://eprints.uthm.edu.my/2614/1/P12644_ff55d04e6fb954e2601fc15518ebb96f.pdf http://eprints.uthm.edu.my/2614/ https://doi.org/10.1063/5.0053192 |
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