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Published July 2011 | Submitted + Published
Book Section - Chapter Open

Adaptively Learning the Crowd Kernel

Abstract

We introduce an algorithm that, given n objects, learns a similarity matrix over all n^2 pairs, from crowdsourced data alone. The algorithm samples responses to adaptively chosen triplet-based relative-similarity queries. Each query has the form "is object a more similar to b or to c?" and is chosen to be maximally informative given the preceding responses. The output is an embedding of the objects into Euclidean space (like MDS); we refer to this as the "crowd kernel." SVMs reveal that the crowd kernel captures prominent and subtle features across a number of domains, such as "is striped" among neckties and "vowel vs. consonant" among letters.

Additional Information

© 2011 by the author(s)/owner(s). We thank Sham Kakade and Varun Kanade for helpful discussions. Serge Belongie's research is partly funded by ONR MURI Grant N00014-08-1-0638 and NSF Grant AGS-0941760.

Attached Files

Published - ICML2011Tamuz_395.pdf

Submitted - 1105.1033.pdf

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