Explaining Deep Classification of Time-Series Data with Learned Prototypes.

CEUR workshop proceedings Pub Date : 2019-08-01
Alan H Gee, Diego Garcia-Olano, Joydeep Ghosh, David Paydarfar
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Abstract

The emergence of deep learning networks raises a need for explainable AI so that users and domain experts can be confident applying them to high-risk decisions. In this paper, we leverage data from the latent space induced by deep learning models to learn stereotypical representations or "prototypes" during training to elucidate the algorithmic decision-making process. We study how leveraging prototypes effect classification decisions of two dimensional time-series data in a few different settings: (1) electrocardiogram (ECG) waveforms to detect clinical bradycardia, a slowing of heart rate, in preterm infants, (2) respiration waveforms to detect apnea of prematurity, and (3) audio waveforms to classify spoken digits. We improve upon existing models by optimizing for increased prototype diversity and robustness, visualize how these prototypes in the latent space are used by the model to distinguish classes, and show that prototypes are capable of learning features on two dimensional time-series data to produce explainable insights during classification tasks. We show that the prototypes are capable of learning real-world features - bradycardia in ECG, apnea in respiration, and articulation in speech - as well as features within sub-classes. Our novel work leverages learned prototypical framework on two dimensional time-series data to produce explainable insights during classification tasks.

Abstract Image

Abstract Image

用学习原型解释时间序列数据的深度分类。
深度学习网络的出现提出了对可解释的人工智能的需求,以便用户和领域专家可以自信地将它们应用于高风险决策。在本文中,我们利用深度学习模型诱导的潜在空间数据来学习训练过程中的刻板印象表征或“原型”,以阐明算法决策过程。我们研究了如何在几种不同的设置中利用二维时间序列数据的原型效应分类决策:(1)心电图(ECG)波形来检测早产儿的临床心动缓,心率减慢,(2)呼吸波形来检测早产儿的呼吸暂停,(3)音频波形来分类语音。我们通过优化增加原型多样性和鲁棒性来改进现有模型,可视化模型如何使用潜在空间中的这些原型来区分类别,并表明原型能够学习二维时间序列数据上的特征,从而在分类任务中产生可解释的见解。我们表明,原型能够学习现实世界的特征——心电图心动过缓、呼吸呼吸暂停和语音发音——以及子类中的特征。我们的新工作利用在二维时间序列数据上学习的原型框架,在分类任务中产生可解释的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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