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Is it possible to use SVM to learn a training sample with an input of "Feature Matrix" rather than a "Feature Vector" ? I need to classify XML documents by representing each document as a Feature Matrix. Typically, a feature vector is used to train SVM for text classification. However, representing XML documents as feature vectors could lead to structural information loss!

Thanks in advance!

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1 Answer 1

up vote 1 down vote accepted

Standard practice is to create "long vectors" by "rasterizing" the matrix.

Ultimately, SVMs resolve into lines or hyperplanes, not polygons.

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Sounds reasonable! Thanks :) – topcoder Feb 20 '13 at 6:55

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