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Takeuchi et al., 2011 - Google Patents

Target neighbor consistent feature weighting for nearest neighbor classification

Takeuchi et al., 2011

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Document ID
17626220231474617447
Author
Takeuchi I
Sugiyama M
Publication year
Publication venue
Advances in neural information processing systems

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Snippet

We consider feature selection and weighting for nearest neighbor classifiers. A technical challenge in this scenario is how to cope with the discrete update of nearest neighbors when the feature space metric is changed during the learning process. This issue, called the target …
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Classifications

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