摘要 |
Systems and methods are described for learning the discriminative power-invariance tradeoffs for classification of input data ("tradeoff learning system"). In various embodiments, the tradeoff learning system receives multiple classifiers ("base classifiers") and employs a learning technique to produce a combined classifier. Each received base classifier achieves a different level of tradeoff. The learning technique then decreases a function of kernel weights associated with each of the received classifiers to produce the combined classifier. By decreasing the function of kernel weights, the tradeoff learning system computes a combined classifier that classifies input data more accurately than the received multiple classifiers.
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