Factor analysis is a well-known method for describing the covariance structure among a set of manifest variables through a limited number of unobserved factors. When the observed variables are collected at various occasions on the same statistical units, the data have a three-way structure and standard factor analysis may fail. To overcome these limitations, three-way models, such as the Parafac model, can be adopted. It is often seen as an extension of principal component analysis able to discover unique latent components. The structural version, i.e., as a reparameterization of the covariance matrix, has been also formulated but rarely investigated. In this article, such a formulation is studied by discussing under what conditions factor ...
Some models for three-mode component and three-mode factor analysis are compared focalizing on their...
The methods we have employed so far attempt to repackage all of the variance in the p variables into...
In this paper, we derive uniqueness conditions for a constrained version of the parallel factor (Par...
Factor analysis is a well-known method for describing the covariance structure among a set of manife...
Factor analysis is a well-known model for describing the covariance structure among a set of manifes...
Whereas the unique axes properties of PARAFAC1 have been examined extensively, little is known about...
A three-mode covariance matrix contains covariances of N observations (e.g., subject scores) on J va...
We consider multi-set data consisting of inline image observations, k = 1,…, K (e.g., subject scores...
A sufficient condition in terms of the unique variances of a common factor model is given for the re...
Three-Mode Factor Analysis (3MFA) and PARAFAC are methods to describe three-way data. Both methods e...
Common factor analysis (FA) and principal component analysis (PCA) are commonly used to obtain lower...
Three-Mode Factor Analysis (3MFA) and PARAFAC are methods to describe three-way data. Both methods e...
Three-Mode Factor Analysis (3MFA) and PARAFAC are methods to describe three-way data. Both methods e...
A new diagnostic called the core consistency diagnostic (CORCONDIA) is suggested for determining the...
Assessing the factorial invariance of two-way rating designs such as ratings of concepts on several ...
Some models for three-mode component and three-mode factor analysis are compared focalizing on their...
The methods we have employed so far attempt to repackage all of the variance in the p variables into...
In this paper, we derive uniqueness conditions for a constrained version of the parallel factor (Par...
Factor analysis is a well-known method for describing the covariance structure among a set of manife...
Factor analysis is a well-known model for describing the covariance structure among a set of manifes...
Whereas the unique axes properties of PARAFAC1 have been examined extensively, little is known about...
A three-mode covariance matrix contains covariances of N observations (e.g., subject scores) on J va...
We consider multi-set data consisting of inline image observations, k = 1,…, K (e.g., subject scores...
A sufficient condition in terms of the unique variances of a common factor model is given for the re...
Three-Mode Factor Analysis (3MFA) and PARAFAC are methods to describe three-way data. Both methods e...
Common factor analysis (FA) and principal component analysis (PCA) are commonly used to obtain lower...
Three-Mode Factor Analysis (3MFA) and PARAFAC are methods to describe three-way data. Both methods e...
Three-Mode Factor Analysis (3MFA) and PARAFAC are methods to describe three-way data. Both methods e...
A new diagnostic called the core consistency diagnostic (CORCONDIA) is suggested for determining the...
Assessing the factorial invariance of two-way rating designs such as ratings of concepts on several ...
Some models for three-mode component and three-mode factor analysis are compared focalizing on their...
The methods we have employed so far attempt to repackage all of the variance in the p variables into...
In this paper, we derive uniqueness conditions for a constrained version of the parallel factor (Par...