Reliable Machine Learning for Wearable Activity Monitoring: Novel Algorithms and Theoretical Guarantees

Dina Hussein, Taha Belkhouja, Ganapati Bhat, J. Doppa
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引用次数: 6

Abstract

Wearable devices are becoming popular for health and activity monitoring. The machine learning (ML) models for these applications are trained by collecting data in a laboratory with precise control of experimental settings. However, during real-world deployment/usage, the experimental settings (e.g., sensor position or sampling rate) may deviate from those used during training. This discrepancy can degrade the accuracy and effectiveness of the health monitoring applications. Therefore, there is a great need to develop reliable ML approaches that provide high accuracy for real-world deployment. In this paper, we propose a novel statistical optimization approach referred as StatOpt that automatically accounts for the real-world disturbances in sensing data to improve the reliability of ML models for wearable devices. We theoretically derive the upper bounds on sensor data disturbance for StatOpt to produce a ML model with reliability certificates. We validate StatOpt on two publicly available datasets for human activity recognition. Our results show that compared to standard ML algorithms, the reliable ML classifiers enabled by the StatOpt approach improve the accuracy up to 50% in real-world settings with zero overhead, while baseline approaches incur significant overhead and fail to achieve comparable accuracy.
可穿戴式活动监测的可靠机器学习:新算法和理论保证
可穿戴设备在健康和活动监测方面越来越受欢迎。这些应用程序的机器学习(ML)模型是通过在实验室收集数据并精确控制实验设置来训练的。然而,在实际部署/使用过程中,实验设置(例如,传感器位置或采样率)可能会偏离训练期间使用的设置。这种差异会降低运行状况监视应用程序的准确性和有效性。因此,非常需要开发可靠的ML方法,为现实世界的部署提供高精度。在本文中,我们提出了一种称为StatOpt的新型统计优化方法,该方法自动考虑传感数据中的现实干扰,以提高可穿戴设备ML模型的可靠性。我们从理论上推导了传感器数据扰动的上界,以产生具有可靠性证书的机器学习模型。我们在两个公开可用的人类活动识别数据集上验证StatOpt。我们的研究结果表明,与标准机器学习算法相比,StatOpt方法启用的可靠机器学习分类器在真实环境下的准确率提高了50%,开销为零,而基线方法会产生显著的开销,无法达到相当的精度。
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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