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Revista Colombiana de Estadística

Print version ISSN 0120-1751

Abstract

GONZALEZ ROJAS, VICTOR MANUEL. Inter-Battery Factor Analysis via PLS: The Missing Data Case. Rev.Colomb.Estad. [online]. 2016, vol.39, n.2, pp.247-266. ISSN 0120-1751.  https://doi.org/10.15446/rce.v39n2.52724.

In this article we develop the Inter-battery Factor Analysis (IBA) by using PLS (Partial Least Squares) methods. As the PLS methods are algorithms that iterate until convergence, an adequate intervention in some of their stages provides a solution to problems such as missing data. Specifically, we take the iterative stage of the PLS regression and implement the "available data" principle from the NIPALS (Non-linear estimation by Iterative Partial Least Squares) algorithm to allow the algorithmic development of the IBA with missing data. We provide the basic elements to correctly analyse and interpret the results. This new algorithm for IBA, developed under the R programming environment, fundamentally executes iterative convergent sequences of orthogonal projections of vectors coupled with the available data, and works adequately in bases with or without missing data. To present the basic concepts of the IBA and to cross-reference the results derived from the algorithmic application, we use the complete Linnerud database for the classical analysis; then we contaminate this database with a random sample that represents approximately 7% of the non-available (NA) data for the analysis with missing data. We ascertain that the results obtained from the algorithm running with complete data are exactly the same as those obtained from the classic method for IBA, and that the results with missing data are similar. However, this might not always be the case, as it depends on how much the ‘original’ factorial covariance structure is affected by the absence of information. As such, the interpretation is only valid in relation to the available data.

Keywords : Algorithm; Convergence; Missing data; Partial least squares regression.

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