AbstractWhen 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...