ShareBoost: Efficient multiclass learning with feature sharing
Shalev-shwartz, Shai, Wexler, Yonatan, Shashua, Amnon
–Neural Information Processing Systems
Multiclass prediction is the problem of classifying an object into a relevant target class. We consider the problem of learning a multiclass predictor that uses only few features, and in particular, the number of used features should increase sub-linearly with the number of possible classes. This implies that features should be shared by several classes. We describe and analyze the ShareBoost algorithm for learning a multiclass predictor that uses few shared features. We prove that ShareBoost efficiently finds a predictor that uses few shared features (if such a predictor exists) and that it has a small generalization error. We also describe how to use ShareBoost for learning a non-linear predictor that has a fast evaluation time. In a series of experiments with natural data sets we demonstrate the benefits of ShareBoost and evaluate its success relatively to other state-of-the-art approaches.
Neural Information Processing Systems
Dec-31-2011
- Country:
- Asia > Middle East > Israel (0.14)
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- Research Report > Promising Solution (0.34)
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- Education (0.46)
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