Journal article

Response and predictor folding to counter symmetric dependency in dimension reduction

LA Prendergast, AL Garnham

Australian and New Zealand Journal of Statistics | WILEY | Published : 2016

Abstract

In the regression setting, dimension reduction allows for complicated regression structures to be detected via visualisation in a low-dimensional framework. However, some popular dimension reduction methodologies fail to achieve this aim when faced with a problem often referred to as symmetric dependency. In this paper we show how vastly superior results can be achieved when carrying out response and predictor transformations for methods such as least squares and sliced inverse regression. These transformations are simple to implement and utilise estimates from other dimension reduction methods that are not faced with the symmetric dependency problem. We highlight the effectiveness of our ap..

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University of Melbourne Researchers