Article ID Journal Published Year Pages File Type
4961894 Procedia Computer Science 2016 8 Pages PDF
Abstract

When we work with two three-mode three-way data sets, such as panel data, we often investigate two types of factors: common factors, which represent relationships between the two data sets, and unique factors, which show the uniqueness of each data set relative to the other. We propose a method for investigating common and unique factors simultaneously. Canonical covariance analysis is an existing method that allows the estimation of common and unique factors simultaneously; however, this method was proposed for use with two-mode two-way data, and it is limited to quantitative data. Thus, applying canonical covariance analysis to three-mode three-way data sets or to categorical data sets is not suitable. To overcome this problem, we build on the concept of the Tucker model and the concept of non-metric principal component analysis to develop and propose a method suitable the analysis of categorical three-mode three-way data sets. Moreover, we introduce connector matrices, making it easy to determine which factors are common and allowing the selection of different numbers of dimensions for the factors.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
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