An abundance of methods exist to regress a y variable on a set of x variables collected in a matrix X. In the chemical sciences a growing number of problems translate into arrays of measurements X and Y, where X and Y are three-way arrays or multiway arrays. In this paper a general model is described for regressing such a multiway Y on a multiway X, while taking into account three-way structures in X and Y. A global least squares optimization problem is formulated to estimate the parameters of the model. The model is described and illustrated with a real industrial example from batch process operation. An algorithm is given in an appendix. Copyright (C) 1999 John Wiley & Sons, Ltd.</p
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Various real-world problem areas, such as engineering, physics, chemistry, biology, economics, socia...
The field of multiway data analysis is maturing and deserves a second special issue after the first ...
The purpose of this article is to find the settings of the factors which simultaneously optimize sev...
This article describes the R package mcglm implemented for fitting multivariate covariance generaliz...
AbstractThree-way data arise in different application domains when multiple responses are measured a...
Three-way data arise in different application domains when multiple responses are measured at differ...
The extension of Multivariate Curve Resolution‐Alternating Least Squares (MCR‐ALS) to the analysis o...
In this paper, we propose a formulation of logistic regression for multiway (i.e. data where the sam...
A method for multivariate regression is proposed that is based on the simultaneous least-squares min...
Response surface methodology involves relationships between different variables, specifically experi...
International audienceThis chapter deals with the multiple linear regression. That is we investigate...
Under multi-treatment regression analysis, instead of a sample for each treatment of a linear model,...
In this paper, we propose an approach for learning regression models efficiently in an environment w...
In the present work, a multiset regression analysis strategy is developed by designing a two-step fe...
This paper provides a tree-based methodology to deal with three-way data sets. The aim is to partiti...
Various real-world problem areas, such as engineering, physics, chemistry, biology, economics, socia...
The field of multiway data analysis is maturing and deserves a second special issue after the first ...
The purpose of this article is to find the settings of the factors which simultaneously optimize sev...
This article describes the R package mcglm implemented for fitting multivariate covariance generaliz...