4.7 Article

Real-time sufficient dimension reduction through principal least squares support vector machines

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Summary: In this paper, we review three families of methods in linear sufficient dimension reduction through optimization, including minimization of general loss functions and maximization of dependence measures. Classical methods and modern methods are unified under a common framework; an information-theoretic perspective is provided for the third family of sufficient dimension reduction methods.

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