نتایج جستجو برای: ridge regression

تعداد نتایج: 331006  

Journal: :The International Journal of Biostatistics 2011

Journal: :Numerical Linear Algebra With Applications 2021

Solving linear systems is often the computational bottleneck in real-life problems. Iterative solvers are only option due to complexity of direct algorithms or because system matrix not explicitly known. Here, we develop a two-level preconditioner for regularized least squares involving feature data matrix. Variants this may appear machine learning applications, such as ridge regression, logist...

Journal: :CoRR 2009
Fedor Zhdanov Vladimir Vovk

We study the problem of online regression. We do not make any assumptions about input vectors or outcomes. We prove a theoretical bound on the square loss of Ridge Regression. We also show that Bayesian Ridge Regression can be thought of as an online algorithm competing with all the Gaussian linear experts. We then consider the case of infinite-dimensional Hilbert spaces and prove relative loss...

2007
D. E. RAMIREZ

Anomalies persist in the foundations of ridge regression as set forth in Hoerl and Kennard (1970) and subsequently. Conventional ridge estimators and their properties do not follow on constraining lengths of solution vectors using LaGrange’s method, as claimed. Estimators so constrained have singular distributions; the proposed solutions are not necessarily minimizing; and heretofore undiscover...

2014
Anwar Fitrianto Ceng Yik

When independent variables have high linear correlation in a multiple linear regression model, we can have wrong analysis. It happens if we do the multiple linear regression analysis based on common Ordinary Least Squares (OLS) method. In this situation, we are suggested to use ridge regression estimator. We conduct some simulation study to compare the performance of ridge regression estimator ...

Journal: :Mathematical Problems in Engineering 2021

The methods of two-parameter ridge and ordinary regression are very sensitive to the presence joint problem multicollinearity outliers in y-direction. To overcome this problem, modified robust M-estimators proposed. new estimators then compared with existing ones by means extensive Monte Carlo simulations. According mean squared error (MSE) criterion, outperform least square estimator, estimato...

2018
Shannon R. McCurdy

Ridge leverage scores provide a balance between low-rank approximation and regularization, and are ubiquitous in randomized linear algebra and machine learning. Deterministic algorithms are also of interest in the moderately big data regime, because deterministic algorithms provide interpretability to the practitioner by having no failure probability and always returning the same results. We pr...

This paper deals with ridge estimation of fuzzy nonparametric regression models using triangular fuzzy numbers. This estimation method is obtained by implementing ridge regression learning algorithm in the La- grangian dual space. The distance measure for fuzzy numbers that suggested by Diamond is used and the local linear smoothing technique with the cross- validation procedure for selecting t...

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