Quasinormal operator: Difference between revisions

From formulasearchengine
Jump to navigation Jump to search
en>Mark viking
Added wl
en>Yobot
m WP:CHECKWIKI error fixes using AWB (10093)
 
Line 1: Line 1:
In [[statistics]], the '''generalized linear array model'''('''GLAM''') is used for analyzing data sets with array structures. It based on the [[generalized linear model]] with the [[design matrix]] written as a [[Kronecker product]].
I am Oscar and I totally dig that title. Hiring is her working day occupation now but std [https://hcbsales.com/node/3739 at home std testing] test she's usually wanted her own company. One of [http://www.revleft.com/vb/member.php?u=160656 over the counter std test] extremely best issues in the world for me is to do aerobics and I've been doing it for fairly a while. South Dakota is her std home test beginning location but she requirements to transfer because of her family.<br><br>Here is my homepage ... home [http://Samedaystdtesting.com/testing-clinics/florida-fl/hialeah-std-testing/2750-west-68th-street-suite-225-226-33016 std test] kit - [http://www.onbizin.co.kr/xe/?document_srl=354357 visit the up coming internet page],
 
== Overview ==
The generalized linear array model or GLAM was introduced in 2006.<ref>Currie, I.D.;Durban, M.;Eilers, P. H. C. (2006) "Generalized linear array models with applications to multidimensional smoothing",''[[Journal of the Royal Statistical Society]]'', 68(2), 259-280.</ref>  Such models provide a structure and a computational procedure for fitting [[generalized linear model]]s or GLMs whose model matrix can be written as a Kronecker product and whose data can be written as an array. In a large GLM, the GLAM approach gives very substantial savings in both storage and computational time over the usual GLM algorithm. 
 
Suppose that the data <math>\mathbf Y</math> is arranged in a <math>d</math>-dimensional array with size <math>n_1\times n_2\times\ldots\times n_d</math>; thus,the corresponding data vector <math>\mathbf y = \textbf{vec}(\mathbf Y)</math> has size <math>n_1n_2n_3\cdots n_d</math>. Suppose also that the [[design matrix]] is of the form
:<math>\mathbf X = \mathbf X_d\otimes\mathbf X_{d-1}\otimes\ldots\otimes\mathbf X_1.</math> 
 
The standard analysis of a GLM with data vector <math>\mathbf y</math> and design matrix <math>\mathbf X</math> proceeds by repeated evaluation of the scoring algorithm
 
:<math> \mathbf X'\tilde{\mathbf W}_\delta\mathbf X\hat{\boldsymbol\theta} = \mathbf X'\tilde{\mathbf W}_\delta\tilde{\mathbf z} ,</math>
 
where <math>\tilde{\boldsymbol\theta}</math> represents the approximate solution of <math>\boldsymbol\theta</math>, and <math>\hat{\boldsymbol\theta}</math> is the improved value of it; <math>\mathbf W_\delta</math> is the diagonal weight matrix with elements
 
:<math> w_{ii}^{-1} = \left(\frac{\partial\eta_i}{\partial\mu_i}\right)^2\text{var}(y_i),</math>
 
and
:<math>\mathbf z = \boldsymbol\eta + \mathbf W_\delta^{-1}(\mathbf y - \boldsymbol\mu)</math>
is the working variable.
 
Computationally, GLAM provides array algorithms to calculate the linear predictor,
:<math> \boldsymbol\eta = \mathbf X \boldsymbol\theta </math>
and the weighted inner product
:<math> \mathbf X'\tilde{\mathbf W}_\delta\mathbf X </math>
without evaluation of the model matrix <math> \mathbf X .</math>
 
===Example===
 
In 2 dimensions, let <math>\mathbf X = \mathbf X_2\otimes\mathbf X_1,</math> then the linear predictor is written <math>\mathbf X_1 \boldsymbol\Theta \mathbf X_2' </math> where <math>\boldsymbol\Theta </math> is the matrix of coefficients; the weighted inner product is obtained from <math>G(\mathbf X_1)' \mathbf W G(\mathbf X_2)</math> and <math> \mathbf W </math> is the matrix of weights; here <math>G(\mathbf M) </math> is the row tensor function of the <math> r \times c</math> matrix <math> \mathbf M </math> given by
 
:<math>G(\mathbf M) = (\mathbf M \otimes \mathbf 1') * (\mathbf 1' \otimes \mathbf M)</math>
where <math>*</math> means element by element multiplication and <math>\mathbf 1</math> is a vector of 1's of length <math> c</math>.
 
These low storage high speed formulae extend to <math>d</math>-dimensions.
 
==Applications==
GLAM is designed to be used in <math>d</math>-dimensional smoothing problems where the data are arranged in an array and the smoothing matrix is constructed as a Kronecker product of <math>d</math> one-dimensional smoothing matrices.
 
==References==
{{reflist}}
 
[[Category:Multivariate statistics]]
[[Category:Generalized linear models]]

Latest revision as of 14:17, 5 May 2014

I am Oscar and I totally dig that title. Hiring is her working day occupation now but std at home std testing test she's usually wanted her own company. One of over the counter std test extremely best issues in the world for me is to do aerobics and I've been doing it for fairly a while. South Dakota is her std home test beginning location but she requirements to transfer because of her family.

Here is my homepage ... home std test kit - visit the up coming internet page,