A Cross-Conformal Predictor for Multi-label Classification

Autor: Papadopoulos, Harris
Rok vydání: 2022
Předmět:
Zdroj: Proceedings of the 3rd Workshop on Conformal Prediction and its Applications (COPA 2014), IFIP AICT 437, pp. 241-250. Springer, 2014
Druh dokumentu: Working Paper
DOI: 10.1007/978-3-662-44722-2_26
Popis: Unlike the typical classification setting where each instance is associated with a single class, in multi-label learning each instance is associated with multiple classes simultaneously. Therefore the learning task in this setting is to predict the subset of classes to which each instance belongs. This work examines the application of a recently developed framework called Conformal Prediction (CP) to the multi-label learning setting. CP complements the predictions of machine learning algorithms with reliable measures of confidence. As a result the proposed approach instead of just predicting the most likely subset of classes for a new unseen instance, also indicates the likelihood of each predicted subset being correct. This additional information is especially valuable in the multi-label setting where the overall uncertainty is extremely high.
Comment: 10 Pages
Databáze: arXiv