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Poster

Localized Sliced Inverse Regression

Qiang Wu · Sayan Mukherjee · Feng Liang


Abstract:

We developed localized sliced inverse regression for supervised dimension reduction. It has the advantages of preventing degeneracy, increasing estimation accuracy, and automatic subclass discovery in classification problems. A semisupervised version is proposed for the use of unlabeled data. The utility is illustrated on simulated as well as real data sets.

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