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Study of Inflation using Stationary Test with Augmented Dickey Fuller & Phillips-Peron Unit Root Test (Case in Bukittinggi City Inflation for 2014-2019)

Afnita Roza, Evony Silvino Violita, Sherly Aktivani

2022EKSAKTA Berkala Ilmiah Bidang MIPA14 citationsDOIOpen Access PDF

Abstract

This classical regression model is designed to handle the relationship between stationary variables and should not be applied to non-stationary series. A time series data is said to be stationary if the mean, variance, and covariance remain constant over time. The problem associated with non-stationary variables, and often encountered by researchers when dealing with time series data, is spurious regression. A clear indicator of false regression is the low Durbin-Watson statistic but has a higher coefficient of determination (R2). Therefore, before doing modeling or forecasting using time series data, it is very important to do a stationary test. In this study, we use inflation data in the City of Bukittinggi from January 2014 to December 2019 as a case study. The data shows an uptrend and correlated error terms. Empirical results show that inflation data in Bukittinggi City is a stationary series.

Topics & Concepts

Spurious relationshipEconometricsInflation (cosmology)Unit root testSeries (stratigraphy)Unit rootStatisticsStationary processMathematicsAugmented Dickey–Fuller testTime seriesStatisticOrder of integration (calculus)RegressionRegression analysisCovarianceCointegrationTheoretical physicsPaleontologyMathematical analysisBiologyPhysicsMultimedia Learning SystemsData Mining and Machine Learning Applications
Study of Inflation using Stationary Test with Augmented Dickey Fuller & Phillips-Peron Unit Root Test (Case in Bukittinggi City Inflation for 2014-2019) | Litcius