多标签分类网络集成

Signals Pub Date : 2022-12-14 DOI:10.3390/signals3040054
L. Nanni, Luca Trambaiollo, S. Brahnam, Xiang Guo, Chancellor Woolsey
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引用次数: 1

摘要

通过将一个样本与多个类标签相关联,多标签学习超越了标准的监督学习模型。在过去十年中开发的许多处理多标签学习的技术中,最好的方法是利用集成和深度学习器的力量。这项工作提出通过结合一组门控循环单元、时间卷积神经网络和用亚当优化方法的变体训练的长短期记忆网络来合并这两种方法。我们检查了许多亚当变体,每个变体基本上都基于当前和过去梯度之间的差异,并根据每个参数调整步长。我们还结合了合并多聚类中心和自举聚合决策树集成,这被证明可以进一步提高分类性能。此外,我们还提供了一个消融研究,以评估我们集成的每个模块产生的性能改进。在代表各种各样多标签任务的大量数据集上进行的多个实验证明了我们最佳集成的鲁棒性,其表现优于最先进的技术。
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Ensemble of Networks for Multilabel Classification
Multilabel learning goes beyond standard supervised learning models by associating a sample with more than one class label. Among the many techniques developed in the last decade to handle multilabel learning best approaches are those harnessing the power of ensembles and deep learners. This work proposes merging both methods by combining a set of gated recurrent units, temporal convolutional neural networks, and long short-term memory networks trained with variants of the Adam optimization approach. We examine many Adam variants, each fundamentally based on the difference between present and past gradients, with step size adjusted for each parameter. We also combine Incorporating Multiple Clustering Centers and a bootstrap-aggregated decision trees ensemble, which is shown to further boost classification performance. In addition, we provide an ablation study for assessing the performance improvement that each module of our ensemble produces. Multiple experiments on a large set of datasets representing a wide variety of multilabel tasks demonstrate the robustness of our best ensemble, which is shown to outperform the state-of-the-art.
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CiteScore
3.20
自引率
0.00%
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0
审稿时长
11 weeks
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