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The Robustness of Estimator Composition

机译:估计器组成的鲁棒性

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We formalize notions of robustness for composite estimators via the notion of a breakdown point. A composite estimator successively applies two (or more) estimators: on data decomposed into disjoint parts, it applies the first estimator on each part, then the second estimator on the outputs of the first estimator. And so on, if the composition is of more than two estimators. Informally, the breakdown point is the minimum fraction of data points which if significantly modified will also significantly modify the output of the estimator, so it is typically desirable to have a large breakdown point. Our main result shows that, under mild conditions on the individual estimators, the breakdown point of the composite estimator is the product of the breakdown points of the individual estimators. We also demonstrate several scenarios, ranging from regression to statistical testing, where this analysis is easy to apply, useful in understanding worst case robustness, and sheds powerful insights onto the associated data analysis.
机译:我们通过击穿点的形式对复合估计的鲁棒性进行形式化。复合估计器依次应用两个(或多个)估计器:在分解为不相交部分的数据上,它在每个部分上应用第一个估计器,然后在第一个估计器的输出上应用第二个估计器。依此类推,如果组成是两个以上的估计量。非正式地,击穿点是数据点的最小部分,如果对其进行了重大修改也将极大地改变估计器的输出,因此通常希望具有较大的击穿点。我们的主要结果表明,在温和的条件下,各个估算器的分解点是各个估算器的分解点的乘积。我们还演示了从回归到统计测试的几种方案,这些分析易于应用,有助于理解最坏情况的鲁棒性,并为关联的数据分析提供了有力的见解。

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