SPOCC: Scalable POssibilistic Classifier Combination -- toward robust aggregation of classifiers
Abstract
We investigate a problem in which each member of a group of learners is trained separately to solve the same classification task. Each learner has access to a training dataset (possibly with overlap across learners) but each trained classifier can be evaluated on a validation dataset. We propose a new approach to aggregate the learner predictions in the possibility theory framework. For each classifier prediction, we build a possibility distribution assessing how likely the classifier prediction is correct using frequentist probabilities estimated on the validation set. The possibility distributions are aggregated using an adaptive t-norm that can accommodate dependency and poor accuracy of the classifier predictions. We prove that the proposed approach possesses a number of desirable classifier combination robustness properties.
Cite
@article{arxiv.1908.06475,
title = {SPOCC: Scalable POssibilistic Classifier Combination -- toward robust aggregation of classifiers},
author = {Mahmoud Albardan and John Klein and Olivier Colot},
journal= {arXiv preprint arXiv:1908.06475},
year = {2020}
}