TY - JOUR
T1 - Searching for additive outliers in nonstationary time series
AU - Perron, Pierre
AU - Rodríguez, Gabriel
PY - 2003/3
Y1 - 2003/3
N2 - Recently, Vogelsang (1999) proposed a method to detect outliers which explicitly imposes the null hypothesis of a unit root. It works in an iterative fashion to select multiple outlier in a given series. We show, via simulations, that, under the null hypothesis of no outliers, it has the right size in finite samples to detect a single outlier but, when applied in an iterative fashion to select multiple outliers, it exhibits severe size distortions towards finding an excessive number of outliers. We show that his iterative method is incorrect and derive the appropriate limiting distribution of the test at each step of the search. Whether corrected or not, we also show that the outliers need to be very large for the method to have any decent power. We propose an alternative method based on first-differenced data that has considerably more power. We also show that our method to identify outliers leads to unit root tests with more accurate finite sample size and robustness to departures from a unit root. The issues are illustrated using two US/Finland real-exchange rate series.
AB - Recently, Vogelsang (1999) proposed a method to detect outliers which explicitly imposes the null hypothesis of a unit root. It works in an iterative fashion to select multiple outlier in a given series. We show, via simulations, that, under the null hypothesis of no outliers, it has the right size in finite samples to detect a single outlier but, when applied in an iterative fashion to select multiple outliers, it exhibits severe size distortions towards finding an excessive number of outliers. We show that his iterative method is incorrect and derive the appropriate limiting distribution of the test at each step of the search. Whether corrected or not, we also show that the outliers need to be very large for the method to have any decent power. We propose an alternative method based on first-differenced data that has considerably more power. We also show that our method to identify outliers leads to unit root tests with more accurate finite sample size and robustness to departures from a unit root. The issues are illustrated using two US/Finland real-exchange rate series.
KW - Additive outliers
KW - Power. JEL: C2 C3 C5
KW - Size
KW - Unit root
KW - Wiener process
KW - t-test
UR - http://www.scopus.com/inward/record.url?scp=0141957074&partnerID=8YFLogxK
U2 - 10.1111/1467-9892.00303
DO - 10.1111/1467-9892.00303
M3 - Article
AN - SCOPUS:0141957074
SN - 0143-9782
VL - 24
SP - 193
EP - 220
JO - Journal of Time Series Analysis
JF - Journal of Time Series Analysis
IS - 2
ER -