Learning a set of directions
author: Wouter M. Koolen,
Centrum Wiskunde & Informatica (CWI)
published: Aug. 9, 2013, recorded: June 2013, views: 3317
published: Aug. 9, 2013, recorded: June 2013, views: 3317
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Description
Assume our data consists of unit vectors (directions) and we are to find a small orthogonal set of the “the most important directions” summarizing the data. We develop online algorithms for this type of problem. The techniques used are similar to Principal Component Analysis which finds the most important small rank subspace of the data.The new problem is significantly more complex since the online algorithm maintains uncertainty over the most relevant subspace as well as directional information.
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