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Benchmark testing of algorithms for very robust regression: FS, LMS and LTS

机译:基准测试的算法可实现非常强大的回归:FS,LMS和LTS

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摘要

The methods of very robust regression resist up to 50% of outliers. The algorithms for very robust regression rely on selecting numerous subsamples of the data. New algorithms for LMS and LTS estimators that have increased computational efficiency due to improved combinatorial sampling are proposed. These and other publicly available algorithms are compared for outlier detection. Timings and estimator quality are also considered. An algorithm using the forward search (FS) has the best properties for both size and power of the outlier tests.
机译:非常强大的回归方法可以抵抗高达50%的异常值。非常鲁棒的回归算法依赖于选择大量数据子样本。提出了用于LMS和LTS估计器的新算法,这些算法由于改进了组合采样而提高了计算效率。比较这些算法和其他公共可用算法,以进行离群值检测。还考虑了时序和估算器质量。使用前向搜索(FS)的算法在异常值测试的大小和功效方面都具有最佳的属性。

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