10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10.

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10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10

10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10

10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10

10. Unfolding Matrix inversion K. Desch – Statistical methods of data analysis SS10 How badly simple matrix inversion can go „wrong“ …

10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10

10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10

10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10

10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10

10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10

10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10

10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10

10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10

10. Unfolding ctd… K. Desch – Statistical methods of data analysis SS10

10. Unfolding variance + bias of regularized unfolding K. Desch – Statistical methods of data analysis SS10

10. Unfolding Resources K. Desch – Statistical methods of data analysis SS10 A recent workshop on Unfolding: Tikhonov regularisation (and simple correction factors) TUnfold() in root Alternative unfolding methods (iterative Bayes, single value decompostion):