Abstract :
In this paper, we consider the problem of robust estimation of the fractional parameter, d, in long memory
autoregressive fractionally integrated moving average processes, when two types of outliers, i.e. additive
and innovation, are taken into account without knowing their number, position or intensity. The proposed
method is a weighted likelihood estimation (WLE) approach for which needed definitions and algorithm
are given. By an extensive Monte Carlo simulation study, we compare the performance of theWLE method
with the performance of both the approximated maximum likelihood estimation (MLE) and the robust Mestimator
proposed by Beran (Statistics for Long-Memory Processes, Chapman&Hall, London, 1994).We
find that robustness against the two types of considered outliers can be achieved without loss of efficiency.
Moreover, as a byproduct of the procedure, we can classify the suspicious observations in different kinds
of outliers. Finally, we apply the proposed methodology to the Nile River annual minima time series.
Keywords :
Weighted likelihood , ARFIMA processes , OUTLIERS , Robust estimation