نتایج جستجو برای: pabon lasso analysis

تعداد نتایج: 2827094  

Journal: :Journal of Machine Learning Research 2013
Tingni Sun Cun-Hui Zhang

We propose a new method of learning a sparse nonnegative-definite target matrix. Our primary example of the target matrix is the inverse of a population covariance or correlation matrix. The algorithm first estimates each column of the target matrix by the scaled Lasso and then adjusts the matrix estimator to be symmetric. The penalty level of the scaled Lasso for each column is completely dete...

Journal: :CoRR 2014
Nikhil S. Rao Robert D. Nowak Christopher R. Cox Timothy T. Rogers

Binary logistic regression with a sparsity constraint on the solution plays a vital role in many high dimensional machine learning applications. In some cases, the features can be grouped together, so that entire subsets of features can be selected or zeroed out. In many applications, however, this can be very restrictive. In this paper, we are interested in a less restrictive form of structure...

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...

2011
Ming Li Charley Lu Anne Wang Shrikanth Narayanan

In this paper, we propose a Lasso based framework to generate the sparse total variability supervectors (s-vectors). Rather than the factor analysis framework, which uses a low dimensional Eigenvoice subspace to represent the mean supervector, the proposed Lasso approach utilizes the l norm regularized least square estimation to project the mean supervector on a pre-defined dictionary. The numb...

ژورنال: :مهندسی پزشکی زیستی 0
محمدعلی منوچهری فارغ التحصیلی کارشناسی ارشد/دانشگاه یزد وحید ابوطالبی عضو هیات علمی / دانشگاه یزد امین مهنام عضو هیات علمی /دانشگاه اصفهان

سیستم های bci مبتنی بر ssvep به دلیل مزایایی همچون نرخ انتقال اطلاعات بالا، نسبت سیگنال به نویز بالا و راحتی کاربران در استفاده از آن ها توجه بسیاری از محققان را به خود جلب کرده اند. هدف پردازشی در این سیستم ها، شناسایی فرکانس ظاهر شده در سیگنال eeg کاربر است. از میان روش های پردازشی مختلفی که برای شناسایی فرکانس در سیستم های bci مبتنی بر ssvep مورد استفاده قرار می گیرند، روش lasso با استقبال ف...

Journal: :Signal processing 2016
Junbo Duan Charles Soussen David Brie Jérôme Idier Mingxi Wan Yu-Ping Wang

This paper studies the intrinsic connection between a generalized LASSO and a basic LASSO formulation. The former is the extended version of the latter by introducing a regularization matrix to the coefficients. We show that when the regularization matrix is even- or under-determined with full rank conditions, the generalized LASSO can be transformed into the LASSO form via the Lagrangian frame...

Journal: :مدیریت اطلاعات سلامت 0
حانیه السادات سجادی کارشناس ارشد، مدیریت خدمات بهداشتی درمانی، دانشگاه علوم پزشکی اصفهان، اصفهان، ایران. (نویسنده ی مسؤول) email: [email protected] زینب السادات سجادی کارشناس، مدارک پزشکی، مرکز آموزشی درمانی فارابی، اصفهان، ایران محمد هادی دکترای عمومی، پزشکی، دانشگاه علوم پزشکی اصفهان، اصفهان، ایران.

introduction: the important of comparing performance of hospitals using hospital indicators, has been made the necessary of utilizing of the application model inevitable. this study aimed to compare hospital performance key indicators simultaneity. methods: in this descriptive cross sectional and retrospective study, 31 hospitals of isfahan university of medical sciences were evaluated in 2007....

2009
Peter Radchenko Gareth M. James

Both classical Forward Selection and the more modern Lasso provide computationally feasible methods for performing variable selection in high dimensional regression problems involving many predictors. We note that although the Lasso is the solution to an optimization problem while Forward Selection is purely algorithmic, the two methods turn out to operate in surprisingly similar fashions. Our ...

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 ...

2010
Kei Hirose Sadanori Konishi

The L1 regularization such as the lasso has been widely used in regression analysis since it tends to produce some coefficients that are exactly zero, which leads to variable selection. We consider the problem of variable selection for factor analysis models via the L1 regularization procedure. In order to select variables each of which is controlled by multiple parameters, we treat parameters ...

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