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A redescending M-estimator approach for outlier-resilient modeling. | LitMetric

AI Article Synopsis

  • The OLS model works best when error terms (mistakes in predictions) follow a normal pattern, but this can be messed up by outliers (unexpected values).
  • Outliers can make the OLS model less useful, so people use M-estimators (MEs) to get better predictions.
  • The new redescending M-estimator (RME) helps deal with outliers better, and tests show it's more effective than other methods in making accurate predictions.

Article Abstract

The OLS model is built on the assumption of normality in the distribution of error terms. However, this assumption can be easily violated, especially when there are outliers in the data. A single outlier can disrupt the normality assumption of error terms, making the OLS model less effective. In such situations, M-estimators (MEs) come into play to obtain reliable estimates. We introduce a redescending M-estimators (RME) for robust regression to handle datasets with outliers. The proposed RME produces more robust estimates by effectively managing the influence of outliers, even at lower values of the tuning constant. We compared the performance of this estimator with existing RMEs using real-life data examples and an extensive simulation study. The results show that our suggested RME is more efficient than the compared ME in various situations.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10965898PMC
http://dx.doi.org/10.1038/s41598-024-57906-1DOI Listing

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