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Gaussian Processes for Active Sensor Management

Gaussian Processes for Active Sensor Management. Alexander N. Dolia , University of Southampton This poster is based on

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Gaussian Processes for Active Sensor Management

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  1. Gaussian Processes for Active Sensor Management Alexander N. Dolia, University of Southampton This poster is based on A.N.Dolia, C.J.Harris, J.Shawe-Taylor, D.M.Titterington, Kernel Ellipsoidal Trimming, submitted to the Special Issue of the Journal Computational Statistics and Data Analysis on Machine Learning and Robust Data Mining. under review. A.N.Dolia, T.De Bie, C.J.Harris, J.Shawe-Taylor, D.M.Titterington.Optimal experimental design for kernel ridge regression, and the minimum volume covering ellipsoid, Workshop on Optimal Experimental Design, Southampton, 22-26 September, 2006 Joint work with: Dr. Tijl De Bie, Katholieke Universiteit Leuven Prof. John Shawe-Taylor, University of Southampton Prof. Chris Harris, University of Southampton Prof. Mike Titterington, University of Glasgow

  2. Problem Statement

  3. Optimal experiment design?

  4. Optimal experiment design for RR

  5. Regularized MVCE

  6. Kernel ridge regression (KRR) Least squares Ridge regression Kernel RR

  7. Kernel MVCE Novelty detection MVCE and duality Regularized MVCE Kernel MVCE

  8. D-OED MVCE standard regularized kernel OED: summary

  9. Experiment

  10. Generalised D-optimal Experimental Design

  11. Conclusions

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