CoPA 2014 - 3rd Workshop on Conformal Prediction and its Applications
Topics/Call fo Papers
Quantifying the uncertainty of the predictions produced by classification and regression techniques is an important problem in the field of Machine Learning. Conformal Prediction is a recently developed framework for complementing the predictions of Machine Learning algorithms with reliable measures of confidence. The methods developed based on this framework produce well-calibrated confidence measures for individual examples without assuming anything more than that the data are generated independently by the same probability distribution (i.i.d.). Since its development the framework has been combined with many popular techniques, such as Support Vector Machines, k-Nearest Neighbours, Neural Networks, Ridge Regression etc., and has been successfully applied to many challenging real world problems, such as the early detection of ovarian cancer, the classification of leukaemia subtypes, the diagnosis of acute abdominal pain, the assessment of stroke risk, the recognition of hypoxia in electroencephalograms (EEGs), the prediction of plant promoters, the prediction of network traffic demand, the estimation of effort for software projects and the backcalculation of non-linear pavement layer moduli. The framework has also been extended to additional problem settings such as semi-supervised learning, anomaly detection, feature selection, outlier detection, change detection in streams and active learning. The aim of this workshop is to serve as a forum for the presentation of new and ongoing work and the exchange of ideas between researchers on any aspect of Conformal Prediction and its applications.
The workshop welcomes submissions introducing further developments and extensions of the Conformal Prediction framework and describing its application to interesting problems of any field.
Topics
The topics of the workshop include, but are not limited to:
Non-conformity measures
Modifications of the framework
Venn prediction
On-line compression modeling
Extensions to additional problem settings
Theoretical analysis of Conformal Prediction techniques
Applications/usages of Conformal Prediction
Honorary Chairs
Vladimir Vapnik
NEC, USA and Royal Holloway, University of London, UK
Alexei Chervonenkis
Russian Academy of Sciences, Russia and Royal Holloway, University of London, UK
Workshop Chairs
Harris Papadopoulos
Frederick University, Cyprus
Email: h.papadopoulos-AT-frederick.ac.cy
Alex Gammerman
Royal Holloway, University of London, UK
Email: alex-AT-cs.rhul.ac.uk
The workshop welcomes submissions introducing further developments and extensions of the Conformal Prediction framework and describing its application to interesting problems of any field.
Topics
The topics of the workshop include, but are not limited to:
Non-conformity measures
Modifications of the framework
Venn prediction
On-line compression modeling
Extensions to additional problem settings
Theoretical analysis of Conformal Prediction techniques
Applications/usages of Conformal Prediction
Honorary Chairs
Vladimir Vapnik
NEC, USA and Royal Holloway, University of London, UK
Alexei Chervonenkis
Russian Academy of Sciences, Russia and Royal Holloway, University of London, UK
Workshop Chairs
Harris Papadopoulos
Frederick University, Cyprus
Email: h.papadopoulos-AT-frederick.ac.cy
Alex Gammerman
Royal Holloway, University of London, UK
Email: alex-AT-cs.rhul.ac.uk
Other CFPs
Last modified: 2014-02-18 22:26:22