نتایج جستجو برای: pabón lasso model

تعداد نتایج: 2106803  

Journal: :Statistics in medicine 2007
Chenlei Leng Shuangge Ma

As a flexible alternative to the Cox model, the additive risk model assumes that the hazard function is the sum of the baseline hazard and a regression function of covariates. For right censored survival data when variable selection is needed along with model estimation, we propose a path consistent model selector using a modified Lasso approach, under the additive risk model assumption. We sho...

سیستم‌های BCI مبتنی­بر SSVEP به­دلیل مزایایی چون سرعت انتقال اطلاعات بالا، نسبت بالای سیگنال به نویز و راحتی کاربران در استفاده از آن‌ها، توجه بسیاری از محققان را به خود جلب کرده­اند. هدف پردازشی در این سیستم‌ها، شناسایی فرکانس ظاهر­شده در سیگنال EEG کاربر است. از میان روش‌های پردازشی مختلفی که برای شناسایی فرکانس در سیستم‌های BCI مبتنی­بر SSVEP استفاده می­شوند، روش LASSO با استقبال فراوانی همر...

Journal: :Statistics in medicine 2013
Qixuan Chen Sijian Wang

Multiple imputation (MI) is a commonly used technique for handling missing data in large-scale medical and public health studies. However, variable selection on multiply-imputed data remains an important and longstanding statistical problem. If a variable selection method is applied to each imputed dataset separately, it may select different variables for different imputed datasets, which makes...

2016
Anna Klimovskaia Stefan Ganscha Manfred Claassen

Stochastic chemical reaction networks constitute a model class to quantitatively describe dynamics and cell-to-cell variability in biological systems. The topology of these networks typically is only partially characterized due to experimental limitations. Current approaches for refining network topology are based on the explicit enumeration of alternative topologies and are therefore restricte...

Journal: :Neural networks : the official journal of the International Neural Network Society 2010
Junbin Gao Paul Wing Hing Kwan Daming Shi

Kernelized LASSO (Least Absolute Selection and Shrinkage Operator) has been investigated in two separate recent papers [Gao, J., Antolovich, M., & Kwan, P. H. (2008). L1 LASSO and its Bayesian inference. In W. Wobcke, & M. Zhang (Eds.), Lecture notes in computer science: Vol. 5360 (pp. 318-324); Wang, G., Yeung, D. Y., & Lochovsky, F. (2007). The kernel path in kernelized LASSO. In Internationa...

2017
Jonathan I Tietz Christopher J Schwalen Parth S Patel Tucker Maxson Patricia M Blair Hua-Chia Tai Uzma I Zakai Douglas A Mitchell

Ribosomally synthesized and post-translationally modified peptide (RiPP) natural products are attractive for genome-driven discovery and re-engineering, but limitations in bioinformatic methods and exponentially increasing genomic data make large-scale mining of RiPP data difficult. We report RODEO (Rapid ORF Description and Evaluation Online), which combines hidden-Markov-model-based analysis,...

2009
Wook Yeon Hwang Hao Helen Zhang Subhashis Ghosal

We propose a new class of variable selection techniques for regression in high dimensional linear models based on a forward selection version of the LASSO, adaptive LASSO or elastic net, respectively to be called as forward iterative regression and shrinkage technique (FIRST), adaptive FIRST and elastic FIRST. These methods seem to work effectively for extremely sparse high dimensional linear m...

Journal: :PVLDB 2016
Yasuhiro Fujiwara Yasutoshi Ida Junya Arai Mai Nishimura Sotetsu Iwamura

The lasso-based L1-graph is used in many applications since it can effectively model a set of data points as a graph. The lasso is a popular regression approach and the L1-graph represents data points as nodes by using the regression result. More specifically, by solving the L1-optimization problem of the lasso, the sparse regression coefficients are used to obtain the weights of the edges in t...

2014
Peter Craigmile Bala Rajaratnam

Professors McShane and Wyner have written a thought-provoking paper that intends to challenge some of the conventional wisdom in the paleoclimate literature. Rather than commenting on the merits of the entire methodology we focus on one topic. Namely, we discuss theoretical and practical aspects of the use of the least absolute shrinkage and selection operator [Tibshirani (1996)], more popularl...

2006
Hao Helen Zhang Wenbin Lu

We investigate the variable selection problem for Cox’s proportional hazards model, and propose a unified model selection and estimation procedure with desired theoretical properties and computational convenience. The new method is based on a penalized log partial likelihood with the adaptively-weighted L1 penalty on regression coefficients, and is named adaptive-LASSO (ALASSO) estimator. Inste...

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