Diameter-Based Active Learning
classification
💻 cs.LG
stat.ML
keywords
learningactiveupperablealgorithmbeenboundcalled
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To date, the tightest upper and lower-bounds for the active learning of general concept classes have been in terms of a parameter of the learning problem called the splitting index. We provide, for the first time, an efficient algorithm that is able to realize this upper bound, and we empirically demonstrate its good performance.
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