Tell your friends about this item:
Multivariate Calibration of Classifier Scores into Probability Space: Comparison of Uni- and Multivariate Calibration Techniques for Classification and Introduction of the Dirichlet Calibration Martin Gebel
Multivariate Calibration of Classifier Scores into Probability Space: Comparison of Uni- and Multivariate Calibration Techniques for Classification and Introduction of the Dirichlet Calibration
Martin Gebel
This book supplies a unifying framework for the derivation of probabilistic membership values in any classification task. While statistical classifiers usually generate such probabilities which reflect the assessment uncertainty, regularization methods supply membership values which do not induce any probabilistic confidence. It is desirable, to transform or re-scale membership values to membership probabilities, since they are comparable and easier applicable for post-processing. In this book several univariate calibration methods are presented. The methods are compared by their performance in experiments measured in terms of correctness and well-calibration. Multivariate extensions for regularization methods usually use a reduction to binary tasks, followed by univariate calibration and further application of the pairwise coupling algorithm. This book introduces a well-performing alternative to coupling that generates Dirichlet distributed membership probabilities. This flexible one-step algorithm bases on probability theory and is applicable to all classification problems. Dirichlet calibration method and pairwise coupling are compared in further experiments.
| Media | Books Paperback Book (Book with soft cover and glued back) |
| Released | June 25, 2010 |
| ISBN13 | 9783838112244 |
| Publishers | Suedwestdeutscher Verlag fuer Hochschuls |
| Pages | 140 |
| Dimensions | 225 × 8 × 150 mm · 227 g |
| Language | German |
See all of Martin Gebel ( e.g. Paperback Book )