Towards Interpretable Deep Extreme Multi-Label Learning

Yihuang Kang, I-Ling Cheng, W. Mao, Bowen Kuo, Pei-Ju Lee
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Abstract

Many Machine Learning algorithms, such as deep neural networks, have long been criticized for being "black-boxes"-a kind of models unable to provide how it arrive at a decision without further efforts to interpret. This problem has raised concerns on model applications' trust, safety, nondiscrimination, and other ethical issues. In this paper, we discuss the machine learning interpretability of a real-world application, eXtreme Multi-label Learning (XML), which involves learning models from annotated data with many pre-defined labels. We propose a two-step XML approach that combines deep non-negative autoencoder with other multi-label classifiers to tackle different data applications with a large number of labels. Our experimental result shows that the proposed approach is able to cope with many-label problems as well as to provide interpretable label hierarchies and dependencies that helps us understand how the model recognizes the existences of objects in an image.
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迈向可解释的深度极端多标签学习
许多机器学习算法,如深度神经网络,长期以来一直被批评为“黑盒子”——一种模型,如果没有进一步的解释,就无法提供它是如何做出决定的。这个问题引起了人们对模型应用程序的信任、安全、非歧视和其他伦理问题的关注。在本文中,我们讨论了一个现实世界应用的机器学习可解释性,极限多标签学习(XML),它涉及到从带有许多预定义标签的注释数据中学习模型。我们提出了一种两步XML方法,该方法将深度非负自动编码器与其他多标签分类器相结合,以处理具有大量标签的不同数据应用程序。我们的实验结果表明,所提出的方法能够处理许多标签问题,并提供可解释的标签层次结构和依赖关系,帮助我们理解模型如何识别图像中物体的存在。
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