模拟人类行为的个体循环变化。

Emma Pierson, Tim Althoff, Jure Leskovec
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引用次数: 33

摘要

周期是人类健康和行为的基础。例子包括情绪周期、昼夜节律和月经周期。然而,在时间序列数据中建模周期是具有挑战性的,因为在大多数情况下,周期没有被标记或直接观察到,需要从随时间推移的多维测量中推断出来。在这里,我们提出了循环隐马尔可夫模型(cyh - mm),用于检测和建模多维异构时间序列数据集合中的周期。与以前的周期建模方法相比,cyhmm处理了建模真实世界周期时遇到的许多挑战:它们可以对离散和连续维度的多变量数据进行建模;它们显式建模并且对缺失数据具有鲁棒性;它们可以在个体之间共享信息,以适应个体时间序列内部和个体时间序列之间的变化。在合成和真实的健康跟踪数据上进行的实验表明,cyhmm比现有方法更准确地推断周期长度,与性能最佳的基线相比,模拟数据的误差降低了58%,真实数据的误差降低了63%。cyhmm还可以执行基线无法完成的功能:它们可以模拟单个特征/症状在周期过程中的进展,识别最易变化的特征,并将单个时间序列聚类成具有不同特征的组。将cyhmm应用于两个现实世界的健康跟踪数据集——人类月经周期症状和身体活动跟踪数据——可以产生重要的见解,包括在周期的每个点预期出现哪些症状。我们还发现,人们分为几个具有不同循环模式的群体,这些群体在模型未提供的维度上存在差异。例如,通过对月经周期数据集中缺失的数据进行建模,我们能够发现与生育控制相关的医学组用户,即使模型没有提供有关生育控制的信息。
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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Modeling Individual Cyclic Variation in Human Behavior.

Cycles are fundamental to human health and behavior. Examples include mood cycles, circadian rhythms, and the menstrual cycle. However, modeling cycles in time series data is challenging because in most cases the cycles are not labeled or directly observed and need to be inferred from multidimensional measurements taken over time. Here, we present Cyclic Hidden Markov Models (CyH-MMs) for detecting and modeling cycles in a collection of multidimensional heterogeneous time series data. In contrast to previous cycle modeling methods, CyHMMs deal with a number of challenges encountered in modeling real-world cycles: they can model multivariate data with both discrete and continuous dimensions; they explicitly model and are robust to missing data; and they can share information across individuals to accommodate variation both within and between individual time series. Experiments on synthetic and real-world health-tracking data demonstrate that CyHMMs infer cycle lengths more accurately than existing methods, with 58% lower error on simulated data and 63% lower error on real-world data compared to the best-performing baseline. CyHMMs can also perform functions which baselines cannot: they can model the progression of individual features/symptoms over the course of the cycle, identify the most variable features, and cluster individual time series into groups with distinct characteristics. Applying CyHMMs to two real-world health-tracking datasets-of human menstrual cycle symptoms and physical activity tracking data-yields important insights including which symptoms to expect at each point during the cycle. We also find that people fall into several groups with distinct cycle patterns, and that these groups differ along dimensions not provided to the model. For example, by modeling missing data in the menstrual cycles dataset, we are able to discover a medically relevant group of birth control users even though information on birth control is not given to the model.

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