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Runze Li

Researcher at Pennsylvania State University

Publications -  304
Citations -  25154

Runze Li is an academic researcher from Pennsylvania State University. The author has contributed to research in topics: Estimator & Feature selection. The author has an hindex of 53, co-authored 272 publications receiving 21336 citations. Previous affiliations of Runze Li include Academia Sinica & Penn State Cancer Institute.

Papers
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Variable Selection via Nonconcave Penalized Likelihood and its Oracle Properties

TL;DR: In this article, penalized likelihood approaches are proposed to handle variable selection problems, and it is shown that the newly proposed estimators perform as well as the oracle procedure in variable selection; namely, they work as well if the correct submodel were known.
Journal ArticleDOI

One-step Sparse Estimates in Nonconcave Penalized Likelihood Models.

TL;DR: A new unified algorithm based on the local linear approximation for maximizing the penalized likelihood for a broad class of concave penalty functions and shows that if the regularization parameter is appropriately chosen, the one-step LLA estimates enjoy the oracle properties with good initial estimators.
Book

Design and Modeling for Computer Experiments

TL;DR: This book discusses models for computer experiments, design techniques, and some concepts in Experimental Design Computer Experiments.
Journal ArticleDOI

Tuning parameter selectors for the smoothly clipped absolute deviation method.

TL;DR: This work shows that the commonly used the generalised crossvalidation cannot select the tuning parameter satisfactorily, with a nonignorable overfitting effect in the resulting model, and proposes a bic tuning parameter selector, which is shown to be able to identify the true model consistently.
Journal ArticleDOI

Feature Screening via Distance Correlation Learning

TL;DR: In this article, a sure independence screening procedure based on distance correlation (DC-SIS) was proposed for ultra-high-dimensional data analysis, which can be used directly to screen grouped predictor variables and multivariate response variables.