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Machine learning / Computational statistics / Convex analysis / Supervised learning / Parameter / Support vector machine / Normal distribution / Cross-validation / Stochastic gradient descent / Statistics / Mathematics / Mathematical optimization
Date: 2012-02-16 17:45:09
Machine learning
Computational statistics
Convex analysis
Supervised learning
Parameter
Support vector machine
Normal distribution
Cross-validation
Stochastic gradient descent
Statistics
Mathematics
Mathematical optimization

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