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Zhu et al., 2009 - Google Patents

Maximum Entropy Discrimination Markov Networks.

Zhu et al., 2009

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Document ID
18287345753904146941
Author
Zhu J
Xing E
Publication year
Publication venue
Journal of Machine Learning Research

External Links

Snippet

The standard maximum margin approach for structured prediction lacks a straightforward probabilistic interpretation of the learning scheme and the prediction rule. Therefore its unique advantages such as dual sparseness and kernel tricks cannot be easily conjoined …
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