4.7 Article

Multi-label active learning through serial-parallel neural networks

Journal

KNOWLEDGE-BASED SYSTEMS
Volume 251, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.knosys.2022.109226

Keywords

Label correlation; Missing label; Multi -label active learning; Neural network; Query strategy

Funding

  1. Central Government Funds of Guiding Local Scientific and Tech- nological Development, China [2021ZYD0003]
  2. National Natural Science Foundation of China [62006200]
  3. Sichuan Province Youth Science and Technol- ogy Innovation Team, China [2019JDTD0017]

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This study proposes a multi-label active learning algorithm based on serial-parallel neural networks. It addresses the issues of label correlations, missing labels, and label queries through simple and effective mechanisms, achieving state-of-the-art active learning performance.
Multi-label active learning is an extension of supervised learning with high-dimensional label spaces and interactive scenarios. Its key issues include the exploitation of label correlations, handling of missing labels, and selection of query labels. Various techniques have been proposed for this purpose; however, there is still room for performance improvement. In this study, we propose a multi-label active learning through serial-parallel neural networks (MASP) algorithm with simple and effective mechanisms. For label correlations, the serial part of the network extracts features that are common to all the labels. This mechanism is more effective than the explicit feature extraction or compressed sensing methods. Regarding the missing labels, the network sets the corresponding losses to zero for backpropagation. Thus, it does not require label completions that may introduce additional errors. For label queries, the parallel part of the network provides independent pairwise predictions for each label. Such pairwise predictions present appropriate information for computing label uncertainty. Three sets of experiments were conducted on 22 benchmark datasets using 14 popular algorithms for comparison. The results show that our algorithm achieves state-of-the-art active learning performance. (c) 2022 Elsevier B.V. All rights reserved.

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