Unit root test
In statistics, a unit root test tests whether a time series variable is non-stationary and possesses a unit root. The null hypothesis is generally defined as the presence of a unit root and the alternative hypothesis is either stationarity, trend stationarity or explosive root depending on the test used.
General approach
[edit | edit source]In general, the approach to unit root testing implicitly assumes that the time series to be tested can be written as,
where,
- is the deterministic component (trend, seasonal component, etc.)
- is the stochastic component.
- is the stationary error process.
The task of the test is to determine whether the stochastic component contains a unit root or is stationary.[1]
Main tests
[edit | edit source]Other popular tests include:
- augmented Dickey–Fuller test[2]
- this is valid in large samples.
- Phillips–Perron test
- KPSS test
- here the null hypothesis is trend stationarity rather than the presence of a unit root.
- ADF-GLS test
Unit root tests are closely linked to serial correlation tests. However, while all processes with a unit root will exhibit serial correlation, not all serially correlated time series will have a unit root. Popular serial correlation tests include:
Notes
[edit | edit source]References
[edit | edit source]- Lua error in Module:Citation/CS1/Configuration at line 2172: attempt to index field '?' (a nil value). "2007 revision" Archived 2014-06-17 at the Wayback Machine
- Lua error in Module:Citation/CS1/Configuration at line 2172: attempt to index field '?' (a nil value).
- Lua error in Module:Citation/CS1/Configuration at line 2172: attempt to index field '?' (a nil value).