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I am trying to fit a model using rather limited data with non-linear least squares and least absolute deviation approach. My problem is that both estimators are not very robust, and so bootstrap and jackknife both give abnormally high estimates of variance.

I am wondering what are some common and more robust estimators? Similar in spirit to least squares and least absolute deviation.

I was wondering something along the lines of:

$$L(\theta) = \sum_{i} \sqrt{|\theta_i - \theta |}$$

Since the square roots reduce the impact of outliers. But I cannot find a name of such an approach, so I guess it would be non-standard.

The closest thing I can find is the "trimmed least squares" approach. Is this commonly used? And if not, why?

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  • $\begingroup$ Look into Lp norm regression. See Money et al. (2007) for an overview. This is a generalization of least squares where any norm can be used. You chose the p=.5 norm. $\endgroup$
    – Noah
    Commented Apr 13, 2020 at 17:32
  • $\begingroup$ stats.idre.ucla.edu/r/dae/robust-regression may be informative in this regard. $\endgroup$
    – jbowman
    Commented Apr 13, 2020 at 21:40
  • $\begingroup$ Many thanks to both, a lot of help. $\endgroup$
    – potato12
    Commented Apr 14, 2020 at 9:49

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Frank Harrell, in a post to his blog some time back, criticized the ubiquitous mistake made by using symmetric measures of uncertainty with asymmetric information. His recommendation was to substitute the Gini Mean Difference (GMD). As Yitzhaki and Schechtman note in their 2015 book The Gini Methodology: A Primer on a Statistical Methodology, all of the standard measures of uncertainty can be subsumed under the more general and robust GMD metric.

In chapter 4 of their book, "Decompositions of the GMD", they discuss a GMD-based alternative, ANOGI, analysis of Gini techniques, the equivalent of ANOVA performed with the Gini coefficient. The problem is that, while the GMD and Gini coefficient metrics are widely available, to the best of my knowledge, no off-the-shelf software currently implements the ANOGI methodology.

That said, it's not clear what you mean by limited data. It may be that, no matter how robust the metric, the resulting variability will not differ by much.

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