2022
DOI: 10.1214/21-ejs1927
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On robust learning in the canonical change point problem under heavy tailed errors in finite and growing dimensions

Abstract: This paper presents a number of new findings about the canonical change point estimation problem. The first part studies the estimation of a change point on the real line in a simple stump model using the robust Huber estimating function which interpolates between the 1 (absolute deviation) and 2 (least squares) based criteria. While the 2 criterion has been studied extensively, its robust counterparts and in particular, the 1 minimization problem have not. We derive the limit distribution of the estimated cha… Show more

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Cited by 2 publications
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References 37 publications
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