Title
Adaptive Safe Semi-Supervised Extreme Machine Learning.
Abstract
Semisupervised learning (SSL) based on manifold regularization (MR) is an excellent learning framework. However, the performance of SSL heavily depends on the construction of manifold graph and the safety degrees of unlabeled samples. Due to the construction of manifold graph and safety degrees of unlabeled samples are usually preconstruct before classification and fixed during the classification learning process, which results independent with the subsequent classification. Aiming at the above problems, we propose a unified adaptive safe semisupervised learning (AdapSaSSL) framework. This framework adaptively constructs a manifold graph while adaptively calculating the safety degrees of unlabeled samples. Specifically, the weights of manifold graph and its parameters, as well as the safety degrees of unlabeled samples will be optimized during the learning process rather than being calculated in advance. Finally, we then develop and implement a adaptive safe classification method based on the AdapSaSSL framework, which is called adaptive safe semisupervised extreme learning machine (AdSafeSSELM). Experimental results on artificial, benchmark and image datasets show that the performance of AdSafeSSELM is effective and reliable compared to other algorithms.
Year
DOI
Venue
2019
10.1109/ACCESS.2019.2922385
IEEE ACCESS
Keywords
Field
DocType
Semi-supervised learning (SSL),extreme learning machine,adaptive safety degree,adaptive graph,manifold regularization (MR)
Computer science,Artificial intelligence,Machine learning
Journal
Volume
ISSN
Citations 
7
2169-3536
0
PageRank 
References 
Authors
0.34
0
2
Name
Order
Citations
PageRank
Jun Ma14719.80
Chao Yuan223.07