We study linear factor models under the assumptions that factors are mutually independent and independent of errors, and errors can be correlated to some extent. Under factor non-Gaussianity, second to fourth-order moments are shown to yield full identification of the matrix of factor loadings. We develop a simple algorithm to estimate the matrix of factor loadings from these moments. We run Monte Carlo simulations and apply our methodology to British data on cognitive test scores
The statistical dependencies that independent component analysis (ICA) cannot remove often provide r...
In the statistical literature on factor analysis many ingenious graphical and analytical procedures ...
In the statistical literature on factor analysis many ingenious graphical and analytical procedures ...
We study linear factor models under the assumptions that factors are mutually independent and indepe...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
Independent factor analysis (IFA) has recently been proposed in the signal processing literature as ...
Independent factor analysis (IFA) has recently been proposed in the signal processing literature as ...
Independent factor analysis (IFA) has recently been proposed in the signal processing literature as ...
The statistical dependencies that independent component analysis (ICA) cannot remove often provide r...
The statistical dependencies that independent component analysis (ICA) cannot remove often provide r...
In the statistical literature on factor analysis many ingenious graphical and analytical procedures ...
In the statistical literature on factor analysis many ingenious graphical and analytical procedures ...
We study linear factor models under the assumptions that factors are mutually independent and indepe...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
International audienceWe study linear factor models under the assumptions that factors are mutually ...
Independent factor analysis (IFA) has recently been proposed in the signal processing literature as ...
Independent factor analysis (IFA) has recently been proposed in the signal processing literature as ...
Independent factor analysis (IFA) has recently been proposed in the signal processing literature as ...
The statistical dependencies that independent component analysis (ICA) cannot remove often provide r...
The statistical dependencies that independent component analysis (ICA) cannot remove often provide r...
In the statistical literature on factor analysis many ingenious graphical and analytical procedures ...
In the statistical literature on factor analysis many ingenious graphical and analytical procedures ...