Full Paper View Go Back
M. Fajar1 , O.R. Prasetyo2 , S. Nonalisa3 , Wahyudi 4
Section:Research Paper, Product Type: Journal-Paper
Vol.6 ,
Issue.11 , pp.29-33, Nov-2020
Online published on Nov 30, 2020
Copyright © M. Fajar, O.R. Prasetyo, S. Nonalisa, Wahyudi . This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
View this paper at Google Scholar | DPI Digital Library
How to Cite this Paper
- IEEE Citation
- MLA Citation
- APA Citation
- BibTex Citation
- RIS Citation
IEEE Style Citation: M. Fajar, O.R. Prasetyo, S. Nonalisa, Wahyudi, “Forecasting Unemployment Rate in the Time of COVID-19 Pandemic Using Google Trends Data (Case of Indonesia),” International Journal of Scientific Research in Multidisciplinary Studies , Vol.6, Issue.11, pp.29-33, 2020.
MLA Style Citation: M. Fajar, O.R. Prasetyo, S. Nonalisa, Wahyudi "Forecasting Unemployment Rate in the Time of COVID-19 Pandemic Using Google Trends Data (Case of Indonesia)." International Journal of Scientific Research in Multidisciplinary Studies 6.11 (2020): 29-33.
APA Style Citation: M. Fajar, O.R. Prasetyo, S. Nonalisa, Wahyudi, (2020). Forecasting Unemployment Rate in the Time of COVID-19 Pandemic Using Google Trends Data (Case of Indonesia). International Journal of Scientific Research in Multidisciplinary Studies , 6(11), 29-33.
BibTex Style Citation:
@article{Fajar_2020,
author = {M. Fajar, O.R. Prasetyo, S. Nonalisa, Wahyudi},
title = {Forecasting Unemployment Rate in the Time of COVID-19 Pandemic Using Google Trends Data (Case of Indonesia)},
journal = {International Journal of Scientific Research in Multidisciplinary Studies },
issue_date = {11 2020},
volume = {6},
Issue = {11},
month = {11},
year = {2020},
issn = {2347-2693},
pages = {29-33},
url = {https://www.isroset.org/journal/IJSRMS/full_paper_view.php?paper_id=2162},
publisher = {IJCSE, Indore, INDIA},
}
RIS Style Citation:
TY - JOUR
UR - https://www.isroset.org/journal/IJSRMS/full_paper_view.php?paper_id=2162
TI - Forecasting Unemployment Rate in the Time of COVID-19 Pandemic Using Google Trends Data (Case of Indonesia)
T2 - International Journal of Scientific Research in Multidisciplinary Studies
AU - M. Fajar, O.R. Prasetyo, S. Nonalisa, Wahyudi
PY - 2020
DA - 2020/11/30
PB - IJCSE, Indore, INDIA
SP - 29-33
IS - 11
VL - 6
SN - 2347-2693
ER -
Abstract :
The outbreak of COVID-19 is having a significant impact on the contraction of Indonesia`s economy, which is accompanied by an increase in unemployment. This study aims to predict the unemployment rate during the COVID-19 pandemic by making use of Google Trends data query share for the keyword “phk” (work termination) and former series from official labor force survey conducted by Badan Pusat Statistik (Statistics Indonesia). The method used is ARIMAX. The results of this study show that the ARIMAX model has good forecasting capabilities. This is indicated by the MAPE value of 13.46%. The forecast results show that during the COVID-19 pandemic period (March to June 2020) the open unemployment rate is expected to increase, with a range of 5.46% to 5.70%. The results of forecasting the open unemployment rate using ARIMAX during the COVID-19 period produce forecast values are consistent and close to reality, as an implication of using the Google Trends index query as an exogenous variable can capture the current conditions of a phenomenon that is happening. This implies that the time series model which is built based on the causal relationship between variables reflects current phenomenon if the required data is available and real-time, not only past historical data.
Key-Words / Index Term :
Unemployment, Google Trends, PHK, ARIMAX
References :
[1] Badan Pusat Statistik, “May 5 edition,” Berita Resmi Statistik (BRS), Indonesia, 2020.
[2] Badan Pusat Statistik, “June 2 edition,” Berita Resmi Statistik (BRS), Indonesia, 2020.
[3] Badan Pusat Statistik, “June 15 edition,” Berita Resmi Statistik (BRS), Indonesia, 2020.
[4] D.N. Gujarati, “Basic Economectrics, 4th Edition.,” The McGraw-Hill Companies Inc., New York, 2004.
[5] G.C. Chow and A.L. Lin, “Best linear unbiased interpolation, distribution, and extrapolation of time series by related series,” The review of Economics and Statistics, 372-375, 1971.
[6] H.J. Bierens, “ARMAX model specification testing, with an apllication to unemployment in the Netherlands,” Journal of Econometrics, 35 (1), 161-190, 1987.
[7] J.J.M. Moreno, A.P. Pol, A.S. Abad, and B.C. Blasco, “Using the R-MAPE index as a resistant measure of forecast accuracy,” Psicothema 25 (4), 500-506., 2013.
[8] J. Woo and A.L. Owen, “Forecasting private consumption with Google Trends data,” Journal of Forecasting,38, 81– 91, 2019.
[9] Lembaga Administrasi Negara, “Dampak COVID-19 terhadap kondisi sosial-ekonomi Indonesia,” Webinar of COVID-19 dan tantangan mewujudkan pembangunan berkelanjutan on June 27, 2020 addressed by Chief Statistician of Statistics Indonesia, 2020.
[10] M.Y. Huang, R.R. Rojas, and P.D. Convery, “Forecasting stock market movements using Google Trend searches,” Empirical Economics, 2019.
[11] S. Poyyamozhi and A. Kachi Mohideen, “Forecasting Analysis for Tuberculosis (TB) Incidence in Tamilnadu,” International Journal of Scientific Research in Mathematical and Statistical Sciences, 2018.
[12] W. Anggraeni and A. Laras, “Using Google Trend data in forecasting number of dengue fever cases with ARIMAX method case study: Surabaya, Indonesia,” 2016 International Conference on Information & Communication Technology and Systems (ICTS). IEEE, 114-11, 2016.
[13] W. Enders, “Applied Econometric Time Series, 2nd Edition,” John Wiley & Sons, Inc., New York, 2004.
You do not have rights to view the full text article.
Please contact administration for subscription to Journal or individual article.
Mail us at support@isroset.org or view contact page for more details.