Latent Temporal Flows for Multivariate Analysis of Wearables Data

Magda Amiridi, Gregory Darnell, S. Jewell
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Abstract

Increased use of sensor signals from wearable devices as rich sources of physiological data has sparked growing interest in developing health monitoring systems to identify changes in an individual's health profile. Indeed, machine learning models for sensor signals have enabled a diverse range of healthcare related applications including early detection of abnormalities, fertility tracking, and adverse drug effect prediction. However, these models can fail to account for the dependent high-dimensional nature of the underlying sensor signals. In this paper, we introduce Latent Temporal Flows, a method for multivariate time-series modeling tailored to this setting. We assume that a set of sequences is generated from a multivariate probabilistic model of an unobserved time-varying low-dimensional latent vector. Latent Temporal Flows simultaneously recovers a transformation of the observed sequences into lower-dimensional latent representations via deep autoencoder mappings, and estimates a temporally-conditioned probabilistic model via normalizing flows. Using data from the Apple Heart and Movement Study (AH&MS), we illustrate promising forecasting performance on these challenging signals. Additionally, by analyzing two and three dimensional representations learned by our model, we show that we can identify participants' $\text{VO}_2\text{max}$, a main indicator and summary of cardio-respiratory fitness, using only lower-level signals. Finally, we show that the proposed method consistently outperforms the state-of-the-art in multi-step forecasting benchmarks (achieving at least a $10\%$ performance improvement) on several real-world datasets, while enjoying increased computational efficiency.
可穿戴设备数据多元分析的潜在时间流
越来越多地使用来自可穿戴设备的传感器信号作为丰富的生理数据来源,这激发了人们对开发健康监测系统以识别个人健康状况变化的兴趣。事实上,传感器信号的机器学习模型已经实现了各种与医疗保健相关的应用,包括早期检测异常、生育跟踪和药物不良反应预测。然而,这些模型可能无法解释底层传感器信号的依赖高维性质。在本文中,我们介绍了潜在时间流,这是一种针对这种情况量身定制的多变量时间序列建模方法。我们假设一组序列是由一个未观察到的时变低维潜在向量的多元概率模型生成的。潜在时间流同时通过深度自编码器映射恢复观察序列到低维潜在表示的转换,并通过归一化流估计时间条件概率模型。使用苹果心脏和运动研究(AH&MS)的数据,我们说明了在这些具有挑战性的信号上有希望的预测性能。此外,通过分析我们的模型学习到的二维和三维表征,我们表明我们可以识别参与者的$\text{VO}_2\text{max}$,这是心肺健康的主要指标和总结,仅使用较低水平的信号。最后,我们表明,在几个真实世界的数据集上,所提出的方法在多步预测基准中始终优于最先进的方法(实现至少10%的性能改进),同时提高了计算效率。
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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