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Projected Newton-type methods in machine learning
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Statistical Learning Theory: Models, Concepts, and Results
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Robot Learning
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What You Expect Is What You Get? Potential Use of Contingent Negative Variation for Passive BCI Systems in Gaze-Based HCI
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Kernel Methods in Bioinformatics
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Cue Combination: Beyond Optimality
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