نتایج جستجو برای: lasso

تعداد نتایج: 4548  

2006
Trevor Hastie Jonathan Taylor Robert Tibshirani Guenther Walther

Abstract: We consider the least angle regression and forward stagewise algorithms for solving penalized least squares regression problems. In Efron, Hastie, Johnstone & Tibshirani (2004) it is proved that the least angle regression algorithm, with a small modification, solves the lasso regression problem. Here we give an analogous result for incremental forward stagewise regression, showing tha...

2013
Wenzhuo Yang Huan Xu

We develop a unified robust linear regression model and show that it is equivalent to a general regularization framework to encourage sparse-like structure that contains group Lasso and fused Lasso as specific examples. This provides a robustness interpretation of these widely applied Lasso-like algorithms, and allows us to construct novel generalizations of Lasso-like algorithms by considering...

2009
Sudeep Srivastava Liang Chen

BACKGROUND Because multiple loci control complex diseases, there is great interest in testing markers simultaneously instead of one by one. In this paper, we applied two model selection algorithms: the stochastic search variable selection (SSVS) and the least absolute shrinkage and selection operator (LASSO) to two quantitative phenotypes related to rheumatoid arthritis (RA). RESULTS The Gene...

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 ...

2016
Igor Melnyk Arindam Banerjee

While considerable advances have been made in estimating high-dimensional structured models from independent data using Lasso-type models, limited progress has been made for settings when the samples are dependent. We consider estimating structured VAR (vector auto-regressive model), where the structure can be captured by any suitable norm, e.g., Lasso, group Lasso, order weighted Lasso, etc. I...

2013
Kang Ling

In this project, we discuss high-dimensional regression, where the dimension of the multivariate distribution is larger than the sample size, i.e. d n. With the assumption of sparse structure of the underlying multivariate distribution, we take the advantage of the `1 regularized method for parameter estimation. There are two major problems that will be discussed in this project: (1) a family o...

Journal: :Annals of the Institute of Statistical Mathematics 2013

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...

Journal: :Journal of Machine Learning Research 2012
Andreas Maurer Massimiliano Pontil

We present a data dependent generalization bound for a large class of regularized algorithms which implement structured sparsity constraints. The bound can be applied to standard squared-norm regularization, the Lasso, the group Lasso, some versions of the group Lasso with overlapping groups, multiple kernel learning and other regularization schemes. In all these cases competitive results are o...

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