4.7 Article

Learning adaptive criteria weights for active semi-supervised learning

期刊

INFORMATION SCIENCES
卷 561, 期 -, 页码 286-303

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2021.01.045

关键词

Batch mode active learning; Adaptive criteria weights; Submodular function; Semi-supervised classification; Semi-supervised clustering

资金

  1. National Natural Science Foundation of China [61941113, 82074580]
  2. Fundamental Research Fund for the Central Universities [30918015103, 30918012204]
  3. Natural Science Foundation of Jiangsu Province of China - Science and Technology on Information System Engineering Laboratory [BK20200739, 05202004]
  4. Nanjing Science and Technology Development Plan Project [201805036]
  5. China Academy of Engineering Consulting Research Project [2019ZD10202]
  6. National Social Science Foundation [18BTQ073]
  7. State Grid Technology Project [5211XT190033]

向作者/读者索取更多资源

Batch mode active learning (BMAL) aims to train reliable learning models by efficiently requesting ground truth annotations for beneficial unlabeled points. However, current BMAL methods may have suboptimal batch acquisition due to fixed weights for sampling criteria. This work proposes an Adaptive Criteria Weights batch selection algorithm (ACW) to dynamically adjust the importance of criteria for semi-supervised learning, demonstrating superiority over existing BMAL approaches.
Batch mode active learning (BMAL) is devoted to training trustful learning models with scarce labeled samples by efficiently asking the ground truth annotations of the most beneficial unlabeled points for supervision with the feedback of an expert. Particularly, BMAL algorithms always sample points based on the decent-designed criteria, such as (un)certainty and representativeness, etc. However, present BMAL approaches consistently are afflicted with one limitation: They simply integrate the sampling criteria with fixed weights to select instances for supervised training, which may yield suboptimal batch acquisition since the criteria values of the plentiful candidate unlabeled samples would fluctuate after retraining the classifier with the newly augmented training set. Instead, the weights of sampling criteria should be allocated appropriately. To overcome this problem, this work proposes a novel Adaptive Criteria Weights batch selection algorithm, abbreviated ACW, which dynamically adjusts the importance of (un)certainty and representativeness to choose critical instances for semi-supervised learning. A submodular function is employed to recognize a diverse mini-batch from the selected batch of samples. We apply our proposed ACW batch sampling algorithm to two types of essential semi supervised tasks, i.e., semi-supervised classification and semi-supervised clustering. To the best of our knowledge, this work is the first devoted attempt to explore adaptive mechanism of criteria weights in the context of active learning. The superiority and effectiveness of ACW against the present state-of-the-art BMAL approaches have also been demonstrated by the encouraging experimental results. (c) 2021 Elsevier Inc. All rights reserved.

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