Anytime Representation Learning.

ICML'13: Proceedings of the 30th International Conference on International Conference on Machine Learning - Volume 28(2013)

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摘要
Evaluation cost during test-time is becoming increasingly important as many real-world applications need fast evaluation ( e.g. web search engines, email spam filtering) or use expensive features ( e.g. medical diagnosis). We introduce Anytime Feature Representations (AFR), a novel algorithm that explicitly addresses this trade-off in the data representation rather than in the classifier. This enables us to turn conventional classifiers, in particular Support Vector Machines, into test-time cost sensitive anytime classifiers -- combining the advantages of anytime learning and large-margin classification.
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