Publication: Forecasting the Monthly Real Wage Rate of the Public Sector in Sri Lanka
Type:
Article
Date
2024-12-04
Journal Title
Journal ISSN
Volume Title
Publisher
Faculty of Humanities and Sciences, SLIIT
Abstract
This study assesses the monthly real wage rate
of the public sector of Sri Lanka by elaborati ng a
suitable ti me series model to identi fy the future
trends associated with the real wage rates of Sri
Lanka. The sample data set consists of monthly
real wage rate data from January 2018 to March
2024 from the Central Bank of Sri Lanka (CBSL). The
real wage rate has been calculated selecti ng 2016
as the base year. Suitable parsimonious models
were identi fi ed through the patt erns of the sample
parti al autocorrelati on functi on (PACF) and sample
auto-correlati on functi on (ACF) of the stati onary
series. Based on the indicati ons such as Akaike
informati on criterion (AIC), Schwarz Criterion (SC)
and log likelihood an autoregressive integrated
moving average (ARIMA) model of the type (0,1,2)
was disti nguished as the best fi tt ed model. The
residuals of the best fi tt ed model were ascertained
to be white noise. The model has been validated for
the fi rst three months of 2024. The Mean Absolute
Percentage Error (MAPE) for the validati on data is
9.59%. The forecasted wage rate values from April
2024 to September 2024 are 54.562, 54.096, 53.631,
53.165, 52.7 and 52.234 respecti vely. The study’s
fi ndings can be uti lized by policymakers, economists,
and government workers to improve their fi nancial
planning.
Description
Keywords
ARIMA models, Box Jenkins Methodology, Forecasting, Real wage rate, Time series analysis
