XAI for Self-supervised Clustering of Wireless Spectrum Activity

Ljupcho Milosheski, Gregor Cerar, Blaž Bertalanič, C. Fortuna, M. Mohorčič
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Abstract

The so-called black-box deep learning (DL) models are increasingly used in classification tasks across many scientific disciplines, including wireless communications domain. In this trend, supervised DL models appear as most commonly proposed solutions to domain-related classification problems. Although they are proven to have unmatched performance, the necessity for large labeled training data and their intractable reasoning, as two major drawbacks, are constraining their usage. The self-supervised architectures emerged as a promising solution that reduces the size of the needed labeled data, but the explainability problem remains. In this paper, we propose a methodology for explaining deep clustering, self-supervised learning architectures comprised of a representation learning part based on a Convolutional Neural Network (CNN) and a clustering part. For the state of the art representation learning part, our methodology employs Guided Backpropagation to interpret the regions of interest of the input data. For the clustering part, the methodology relies on Shallow Trees to explain the clustering result using optimized depth decision tree. Finally, a data-specific visualizations part enables connection for each of the clusters to the input data trough the relevant features. We explain on a use case of wireless spectrum activity clustering how the CNN-based, deep clustering architecture reasons.
无线频谱活动的自监督聚类
所谓的黑盒深度学习(DL)模型越来越多地用于许多科学学科的分类任务,包括无线通信领域。在这一趋势中,监督深度学习模型是最常被提出的领域相关分类问题的解决方案。尽管它们被证明具有无与伦比的性能,但对大量标记训练数据的需求和它们难以处理的推理是两个主要缺点,限制了它们的使用。自监督架构作为一种很有前途的解决方案出现,它减少了所需标记数据的大小,但是可解释性问题仍然存在。在本文中,我们提出了一种解释深度聚类的方法,即由基于卷积神经网络(CNN)的表示学习部分和聚类部分组成的自监督学习架构。对于最先进的表示学习部分,我们的方法采用引导反向传播来解释输入数据的感兴趣区域。对于聚类部分,该方法依靠浅树来解释聚类结果,使用优化的深度决策树。最后,特定于数据的可视化部分允许每个集群通过相关特性连接到输入数据。我们通过一个无线频谱活动聚类的用例来解释基于cnn的深度聚类架构的原因。
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