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Takenouchi et al., 2008 - Google Patents

Ternary Bradley-Terry model-based decoding for multi-class classification

Takenouchi et al., 2008

Document ID
13796465391358378793
Author
Takenouchi T
Ishii S
Publication year
Publication venue
2008 IEEE Workshop on Machine Learning for Signal Processing

External Links

Snippet

A multi-class classifier based on the Bradley-Terry model predicts the multi-class label of an input by combining the outputs from multiple binary classifiers, where the combination should be a priori designed as a code word matrix. According to this framework, the code …
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Classifications

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