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Generalized linear array model

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In statistics, the generalized linear array model(GLAM) is used for analyzing the data sets with array structure. It based on the generalized linear model with the regression matrix written as a Kronecker product.

Overview

In the artcile published on Journal of Royal Statisitcal Society series B, 2006, Currie, Durban and Eiler introduced the generalized linear array model. Suppose the data set is arranged in a -dimensional array with size , thus, the corresponding data vector with size , which can be analyzed with regression matrix With this modelling method, then this model can be fitted as a standard Generalized linear model with data vector and regression matrix by repeat evaluation of the scoring algorithm

where represents the approximate solution of , and is the improved value of it.