Searching for authors named Volker Tresp – sorted by Relevance.
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Scaling Kernel-Based Systems to Large Data Sets
- to Large Data Sets Volker Tresp Siemens AG, Corporate Technology Otto-Hahn-Ring 6, 81730 Munchen, Germany
- Cited by 9 (2 self) – Add To MetaCart
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Mixtures of Gaussian processes
- Mixtures of Gaussian Processes Volker Tresp Siemens AG, Corporate Technology, Department of Neural
- Cited by 22 (0 self) – Add To MetaCart
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A Bayesian Committee Machine
- Neural Computation, Vol. 12, pages 2719-2741, 2000 A Bayesian Committee Machine Volker Tresp
- Cited by 50 (7 self) – Add To MetaCart
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Some Solutions to the Missing Feature Problem in Vision
- @(email omitted); Volker Tresp Siemens AG, Central Research and Development ZFE ST SN41 Otto-Hahn Ring 6 8000 Mnchen 83
- Cited by 46 (8 self) – Add To MetaCart
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Missing and Noisy Data in Nonlinear Time-Series
- Missing and Noisy Data in Nonlinear Time-Series Prediction Volker Tresp and Reimar Hofmann Siemens
- Cited by 13 (2 self) – Add To MetaCart
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A Nonlinear State Space Model for the Blood Glucose Metabolism of a Diabetic
- Briegel and Volker Tresp The blood glucose metabolism of a diabetic is a complex nonlinear process closely
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Transductive and Inductive Methods for Approximate Gaussian Process Regression
- ://www.igi.tugraz.at/aschwaig Volker Tresp 2 2 Siemens Corporate Technology CT IC4 Otto-Hahn-Ring 6, 81739 Munich, Germany http://www.tresp
- Cited by 6 (0 self) – Add To MetaCart
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A Solution for Missing Data in Recurrent Neural Networks With an Application to Blood Glucose Prediction
- Prediction Volker Tresp and Thomas Briegel # Siemens AG Corporate Technology Otto-Hahn-Ring 6 81730 M unchen
- Cited by 3 (2 self) – Add To MetaCart
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Nonlinear Time-Series Prediction with Missing and Noisy Data
- Nonlinear Time-Series Prediction with Missing and Noisy Data Volker Tresp and Reimar Hofmann
- Cited by 6 (0 self) – Add To MetaCart
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Fisher Scoring and a Mixture of Modes Approach for Approximate Inference and Learning in Nonlinear State Space Models
- Inference and Learning in Nonlinear State Space Models Thomas Briegel and Volker Tresp Siemens AG
- Cited by 16 (3 self) – Add To MetaCart

