The Forward Search is a powerful general method, incorporating flexible data-driven trimming, for the detection of outliers and unsuspected structure in data and so for building robust models. Starting from small subsets of data, observations that are close to the fitted model are added to the observations used in parameter estimation. As this subset grows we monitor parameter estimates, test statistics and measures of fit such as residuals. This talk surveys theoretical and empirical development in work on the Forward Search over the last decade.
Amsterdam Econometrics Seminars and Workshop Series
- Speaker(s)
- Marco Riani (Parma)
- Date
- 2011-02-25
- Location
- Amsterdam