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Podolak et al., 2011 - Google Patents

CORES: fusion of supervised and unsupervised training methods for a multi-class classification problem

Podolak et al., 2011

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Document ID
8922502761491136459
Author
Podolak I
Roman A
Publication year
Publication venue
Pattern Analysis and Applications

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Snippet

This paper describes in full detail a model of a hierarchical classifier (HC). The original classification problem is broken down into several subproblems and a weak classifier is built for each of them. Subproblems consist of examples from a subset of the whole set of output …
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Classifications

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