نتایج جستجو برای: pabon lasso model

تعداد نتایج: 2106796  

Journal: :Journal of computational and graphical statistics : a joint publication of American Statistical Association, Institute of Mathematical Statistics, Interface Foundation of North America 2016
Ashley Petersen Daniela Witten Noah Simon

We consider the problem of predicting an outcome variable using p covariates that are measured on n independent observations, in a setting in which additive, flexible, and interpretable fits are desired. We propose the fused lasso additive model (FLAM), in which each additive function is estimated to be piecewise constant with a small number of adaptively-chosen knots. FLAM is the solution to a...

Journal: :CoRR 2009
Francis R. Bach

We consider the least-square linear regression problem with regularization by the l 1-norm, a problem usually referred to as the Lasso. In this paper, we first present a detailed asymptotic analysis of model consistency of the Lasso in low-dimensional settings. For various decays of the regularization parameter, we compute asymptotic equivalents of the probability of correct model selection. Fo...

Journal: :The Australasian medical journal 2013
Kamal Gholipour Bahram Delgoshai Iravan Masudi-Asl Kamran Hajinabi Shabnam Iezadi

BACKGROUND Considering governmental scrutiny and financial constraints in medicine, the need for improved performance, which can provide acceptable care for medical consumers, leads to the conduct of new managerial methods to improve effectiveness. AIMS This study aimed to compare performance indicators of obstetrics and gynaecology teaching hospitals in Tabriz. METHOD A longitudinal, retro...

2009
Jinzhu Jia Karl Rohe Bin Yu

Lasso is a popular method for variable selection in regression. Much theoretical understanding has been obtained recently on its model selection or sparsity recovery properties under sparse and homoscedastic linear regression models. Since these standard model assumptions are often not met in practice, it is important to understand how Lasso behaves under nonstandard model assumptions. In this ...

2010
Jerome Friedman Trevor Hastie Robert Tibshirani

We consider the group lasso penalty for the linear model. We note that the standard algorithm for solving the problem assumes that the model matrices in each group are orthonormal. Here we consider a more general penalty that blends the lasso (L1) with the group lasso (“two-norm”). This penalty yields solutions that are sparse at both the group and individual feature levels. We derive an effici...

2013
Huijiang Gao Jiahan Li Hongwang Li Junya Li

Previous genome-wide association study (GWAS) focused on low-order interactions between pairwise single-nucleotide polymorphisms (SNPs) with significant main effects. Little is known how high-order interactions effect, especially one among the SNPs without main effects regulates quantitative traits.Within the frameworks of linear model and generalized linear model, the LASSO with coordinate des...

2016
Hanzhong Liu Bin Yu

Abstract: We study the asymptotic properties of Lasso+mLS and Lasso+ Ridge under the sparse high-dimensional linear regression model: Lasso selecting predictors and then modified Least Squares (mLS) or Ridge estimating their coefficients. First, we propose a valid inference procedure for parameter estimation based on parametric residual bootstrap after Lasso+ mLS and Lasso+Ridge. Second, we der...

Partial linear model is very flexible when the relation between the covariates and responses, either parametric and nonparametric. However, estimation of the regression coefficients is challenging since one must also estimate the nonparametric component simultaneously. As a remedy, the differencing approach, to eliminate the nonparametric component and estimate the regression coefficients, can ...

2006
Hansheng Wang Guodong Li Chih-Ling Tsai

The least absolute shrinkage and selection operator (lasso) has been widely used in regression shrinkage and selection. In this article, we extend its application to the REGression model with AutoRegressive errors (REGAR). Two types of lasso estimators are carefully studied. The first is similar to the traditional lasso estimator with only two tuning parameters (one for regression coefficients ...

Journal: :Signal Processing 2011
Xiaohui Chen Z. Jane Wang Martin J. McKeown

Variable selection is a topic of great importance in high-dimensional statistical modeling and has a wide range of real-world applications. Many variable selection techniques have been proposed in the context of linear regression, and the Lasso model is probably one of the most popular penalized regression techniques. In this paper, we propose a new, fully hierarchical, Bayesian version of the ...

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