Probabilistic Active Learning with Structure-Sensitive Kernels
Publication date
2017-09-13
Editors
Advisors
Supervisors
DOI
Document Type
Part of book
Metadata
Show full item recordCollections
License
Abstract
This work proposes two approaches to improve the poolbased active learning strategy ’Multi-Class Probabilistic Active Learning’ (McPAL) by using two kernel functions based on Gaussian mixture models (GMMs). One uses the kernels for the instance selection of the McPAL strategy, the second employs them in the classification step. The results of the evaluation show that using a different classification model from the one that is used for selection, especially an SVM with one of the kernels, can improve the performance of the active learner in some cases.
Keywords
active learning, gaussian mixture, kernel function, supportvector machine, McPAL
Citation
Lang, D, Kottke, D & Krempl, G M 2017, Probabilistic Active Learning with Structure-Sensitive Kernels. in Proceedings of the Workshop and Tutorial on Interactive Adaptive Learning. vol. 1924, CEUR WS, pp. 37-48.