Li, Housen

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01.03.2022

A Variational View on Statistical Multiscale Estimation

Authors Haltmeier M, Li H, Munk A Journal Annual Review of Statistics and Its Application Citation Annu. Rev. Stat. Appl. 2022.9:343-372. Abstract We present a unifying view on various statistical estimation techniques including penalization, variational, and thresholding methods. These estimators are analyzed in the context of statistical linear inverse problems
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01.06.2021

Frame-constrained Total Variation Regularization for White Noise Regression

Authors del Álamo M, Li H, Munk A Journal The Annals of Statistics Citation Ann. Statist. 49(3): 1318-1346 (June 2021). Abstract Despite the popularity and practical success of total variation (TV) regularization for function estimation, surprisingly little is known about its theoretical performance in a statistical setting. While TV regularization
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22.04.2021

Multiple Haplotype Reconstruction from Allele Frequency Data

Authors Pelizzola M, Behr M, Li H, Munk A, Futschik A Journal Nature Computational Science Citation Nat Comput Sci 1, 262–271 (2021). Abstract Because haplotype information is of widespread interest in biomedical applications, effort has been put into their reconstruction. Here, we propose an efficient method, called haploSep, that is
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13.11.2020

Variational Multiscale Nonparametric Regression: Algorithms and Implementation

Authors del Alamo M, Li H, Munk A, Werner F Journal Algorithms Citation Algorithms 2020, 13(11), 296. Abstract Many modern statistically efficient methods come with tremendous computational challenges, often leading to large-scale optimisation problems. In this work, we examine such computational issues for recently developed estimation methods in nonparametric regression
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16.09.2020

Seeded intervals and noise level estimation in change point detection: A discussion of Fryzlewicz (2020)

Authors Kovács S, Li H, Bühlmann P Journal Journal of the Korean Statistical Society Citation J. Korean Stat. Soc. (2020). Abstract In this discussion, we compare the choice of seeded intervals and that of random intervals for change point segmentation from practical, statistical and computational perspectives. Furthermore, we investigate a
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02.06.2020

The essential histogram

Authors Li H, Munk A, Sieling H, Walther G Journal Biometrika Citation Biometrika (2020), 107, 2, pp. 347–364 Abstract The histogram is widely used as a simple, exploratory way of displaying data, but it is usually not clear how to choose the number and size of the bins. We construct
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28.05.2020

NETT: solving inverse problems with deep neuralnetworks

Authors Li H, Schwab J, Antholzer S, Haltmeier M Journal Inverse Problems Citation Inverse Problems 36(2020) 065005 (23pp). Abstract Recovering a function or high-dimensional parameter vector from indirect measurements is a central task in various scientific areas. Several methods for solving such inverse problems are well developed and well understood.
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05.01.2019

Multiscale change-point segmentation: beyond step functions

Authors Li H, Guo Q, Munk A Journal Electronic Journal of Statistics Citation Electron. J. Statist. Volume 13, Number 2 (2019), 3254-3296. Abstract Modern multiscale type segmentation methods are known to detect multiple change-points with high statistical accuracy, while allowing for fast computation. Underpinning (minimax) estimation theory has been developed
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