Literature DB >> 27626931

Approaches to Regularized Regression - A Comparison between Gradient Boosting and the Lasso.

Tobias Hepp, Matthias Schmid, Olaf Gefeller, Elisabeth Waldmann, Andreas Mayr.   

Abstract

BACKGROUND: Penalization and regularization techniques for statistical modeling have attracted increasing attention in biomedical research due to their advantages in the presence of high-dimensional data. A special focus lies on algorithms that incorporate automatic variable selection like the least absolute shrinkage operator (lasso) or statistical boosting techniques.
OBJECTIVES: Focusing on the linear regression framework, this article compares the two most-common techniques for this task, the lasso and gradient boosting, both from a methodological and a practical perspective.
METHODS: We describe these methods highlighting under which circumstances their results will coincide in low-dimensional settings. In addition, we carry out extensive simulation studies comparing the performance in settings with more predictors than observations and investigate multiple combinations of noise-to-signal ratio and number of true non-zero coeffcients. Finally, we examine the impact of different tuning methods on the results.
RESULTS: Both methods carry out penalization and variable selection for possibly highdimensional data, often resulting in very similar models. An advantage of the lasso is its faster run-time, a strength of the boosting concept is its modular nature, making it easy to extend to other regression settings.
CONCLUSIONS: Although following different strategies with respect to optimization and regularization, both methods imply similar constraints to the estimation problem leading to a comparable performance regarding prediction accuracy and variable selection in practice.

Keywords:  Penalization; boosting; high-dimensional data; lasso; regularization; variable selection

Mesh:

Year:  2016        PMID: 27626931     DOI: 10.3414/ME16-01-0033

Source DB:  PubMed          Journal:  Methods Inf Med        ISSN: 0026-1270            Impact factor:   2.176


  32 in total

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2.  Preoperative Prediction of Extracapsular Extension: Radiomics Signature Based on Magnetic Resonance Imaging to Stage Prostate Cancer.

Authors:  Shuai Ma; Huihui Xie; Huihui Wang; Jiejin Yang; Chao Han; Xiaoying Wang; Xiaodong Zhang
Journal:  Mol Imaging Biol       Date:  2020-06       Impact factor: 3.488

3.  Predicting Triple-Negative Breast Cancer Subtype Using Multiple Single Nucleotide Polymorphisms for Breast Cancer Risk and Several Variable Selection Methods.

Authors:  Lothar Häberle; Alexander Hein; Matthias Rübner; Michael Schneider; Arif B Ekici; Paul Gass; Arndt Hartmann; Rüdiger Schulz-Wendtland; Matthias W Beckmann; Wing-Yee Lo; Werner Schroth; Hiltrud Brauch; Peter A Fasching; Marius Wunderle
Journal:  Geburtshilfe Frauenheilkd       Date:  2017-06-28       Impact factor: 2.915

4.  Radiomics score: a potential prognostic imaging feature for postoperative survival of solitary HCC patients.

Authors:  Bo-Hao Zheng; Long-Zi Liu; Zhi-Zhi Zhang; Jie-Yi Shi; Liang-Qing Dong; Ling-Yu Tian; Zhen-Bin Ding; Yuan Ji; Sheng-Xiang Rao; Jian Zhou; Jia Fan; Xiao-Ying Wang; Qiang Gao
Journal:  BMC Cancer       Date:  2018-11-21       Impact factor: 4.430

5.  Incorporating diffusion- and perfusion-weighted MRI into a radiomics model improves diagnostic performance for pseudoprogression in glioblastoma patients.

Authors:  Jung Youn Kim; Ji Eun Park; Youngheun Jo; Woo Hyun Shim; Soo Jung Nam; Jeong Hoon Kim; Roh-Eul Yoo; Seung Hong Choi; Ho Sung Kim
Journal:  Neuro Oncol       Date:  2019-02-19       Impact factor: 12.300

6.  Radiomics approach for preoperative identification of stages I-II and III-IV of esophageal cancer.

Authors:  Lei Wu; Cong Wang; Xianzheng Tan; Zixuan Cheng; Ke Zhao; Lifen Yan; Yanli Liang; Zaiyi Liu; Changhong Liang
Journal:  Chin J Cancer Res       Date:  2018-08       Impact factor: 5.087

7.  Considerable effects of imaging sequences, feature extraction, feature selection, and classifiers on radiomics-based prediction of microvascular invasion in hepatocellular carcinoma using magnetic resonance imaging.

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Journal:  Quant Imaging Med Surg       Date:  2021-05

Review 8.  An Update on Statistical Boosting in Biomedicine.

Authors:  Andreas Mayr; Benjamin Hofner; Elisabeth Waldmann; Tobias Hepp; Sebastian Meyer; Olaf Gefeller
Journal:  Comput Math Methods Med       Date:  2017-08-02       Impact factor: 2.238

9.  Predictive Modelling Based on Statistical Learning in Biomedicine.

Authors:  Olaf Gefeller; Benjamin Hofner; Andreas Mayr; Elisabeth Waldmann
Journal:  Comput Math Methods Med       Date:  2017-09-28       Impact factor: 2.238

10.  Radiomics Nomogram for Identifying Sub-1 cm Benign and Malignant Thyroid Lesions.

Authors:  Xinxin Wu; Jingjing Li; Yakui Mou; Yao Yao; Jingjing Cui; Ning Mao; Xicheng Song
Journal:  Front Oncol       Date:  2021-06-07       Impact factor: 6.244

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