ROBUST DIAGNOSTIC AND ROBUST ESTIMATION METHODS FOR FIXED EFFECT PANEL DATA MODEL IN PRESENCE OF HIGH LEVERAGE POINTS AND MULTICOLLINEARITY
2018-02-01
Regression analysis is a statistical process for estimating the linear relationships between two or more variables. It involves several techniques for modeling and analyzing several variables. The earliest form of regression was the Least Squares, commonly known as Ordinary Least Squares (OLS) method which was introduced by the two famous statisticians Legendre and Gauss (Maronna et al., 2006). To this day, empirical researchers use OLS and its generalizations since the Gauss-Markov theorem asserts that OLS provides the Best Linear Unbiased Estimator (BLUE) for the parameters of the standard linear model. The estimator is best, in the sense that it is the most efficient one among the linear estimators when the data are smooth or normally distributed, ie do not contain outlying observations. Rousseeuw and Van Zomeren (1990) distinguished outliers (high leverage points and/or vertical outliers) when
2007
Outlier detection and treatment in time series with application to Duhok dam
2007-12-20
Time series are frequently affected by external events such as strikes, sales promotions
advertising, policy changes, new laws or regulations, and so forth. When these external
events are known and are interests of study, they are commonly referred to as
interventions. When the events or the timing of the events are unknown and the events
have substantial impact on the time series, they are often referred to as outliers [18].
Fox (1972) defines two statistical models additive and innovative outliers in a univariate
time series [12]. Box and Tiao (1975) provide a procedure for analyzing a time series in
the presence of known external events [18]. Kleiner, Martin and Thomson (1979)
examine the effects of outliers on the estimation of spectrum of a time series they find
additive outliers to be able to seriously distort the estimated spectra, and discuss some
robust alternatives [15]. Smith and West (1983) propose an on-line monitoring procedure
to detect the presence of abrupt level change and (additive) outliers with in a state space
model formulation [9]. Hillmer (1984) studies the monitoring and adjustment of forecasts
in the presence of outliers under ARIMA models [13].