array(2) { ["lab"]=> string(4) "1409" ["publication"]=> string(5) "12608" } A novel logistic regression model combining semi-supervised learning and active learning for disease classification - Liang Yong | LabXing

A novel logistic regression model combining semi-supervised learning and active learning for disease classification

2018
期刊 Scientific reports
Traditional supervised learning classifier needs a lot of labeled samples to achieve good performance, however in many biological datasets there is only a small size of labeled samples and the remaining samples are unlabeled. Labeling these unlabeled samples manually is difficult or expensive. Technologies such as active learning and semi-supervised learning have been proposed to utilize the unlabeled samples for improving the model performance. However in active learning the model suffers from being short-sighted or biased and some manual workload is still needed. The semi-supervised learning methods are easy to be affected by the noisy samples. In this paper we propose a novel logistic regression model based on complementarity of active learning and semi-supervised learning, for utilizing the unlabeled samples with least cost to improve the disease classification accuracy. In addition to that, an …

  • 卷 8
  • 期 1
  • 页码 1-10
  • Nature Publishing Group