模拟现实世界中相互依存的周期性动作序列。

Takeshi Kurashima, Tim Althoff, Jure Leskovec
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摘要

移动健康应用,包括那些跟踪运动、睡眠和饮食等活动的应用,正在被广泛使用。准确预测人类在现实世界中的行为,对于有针对性地推荐可改善我们健康的产品和个性化这些应用至关重要。然而,由于人类行为的复杂性,进行此类预测极为困难,因为人类行为由大量随时间变化、相互依赖且具有周期性的潜在行动组成。以前的工作没有对这些动态行为进行联合建模,而且主要集中在物品消费模式上,而不是更广泛的行为类型,如饮食、通勤或锻炼。在这项工作中,我们针对时变、相互依赖和周期性的行动序列开发了一种名为 TIPAS 的新型统计模型。我们的方法基于个性化的多变量时间点过程,通过高斯强度混合物对时变动作倾向进行建模。我们的模型通过基于霍克斯过程的自激来捕捉行动之间的短期和长期周期性相互依存关系。我们在两个活动记录数据集上对我们的方法进行了评估,这两个数据集包含 2 万名用户在 17 个月内的 1200 万个真实世界中的动作(如吃饭、睡觉和锻炼)。结果表明,我们的方法可以成功预测用户未来的行为及其时间。具体来说,在多个数据集上,与现有方法相比,TIPAS 对行动及其时间的预测分别提高了 156% 和 37%。对于步行和骑自行车等相对罕见的周期性行为,性能改进幅度尤其大,与基线相比,改进幅度高达 256%。这表明,对真实世界行为中的依赖性和周期性进行明确建模可成功预测未来行动,这对人类行为建模、应用个性化和有针对性的健康干预具有重要意义。
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Modeling Interdependent and Periodic Real-World Action Sequences.

Mobile health applications, including those that track activities such as exercise, sleep, and diet, are becoming widely used. Accurately predicting human actions in the real world is essential for targeted recommendations that could improve our health and for personalization of these applications. However, making such predictions is extremely difficult due to the complexities of human behavior, which consists of a large number of potential actions that vary over time, depend on each other, and are periodic. Previous work has not jointly modeled these dynamics and has largely focused on item consumption patterns instead of broader types of behaviors such as eating, commuting or exercising. In this work, we develop a novel statistical model, called TIPAS, for Time-varying, Interdependent, and Periodic Action Sequences. Our approach is based on personalized, multivariate temporal point processes that model time-varying action propensities through a mixture of Gaussian intensities. Our model captures short-term and long-term periodic interdependencies between actions through Hawkes process-based self-excitations. We evaluate our approach on two activity logging datasets comprising 12 million real-world actions (e.g., eating, sleep, and exercise) taken by 20 thousand users over 17 months. We demonstrate that our approach allows us to make successful predictions of future user actions and their timing. Specifically, TIPAS improves predictions of actions, and their timing, over existing methods across multiple datasets by up to 156%, and up to 37%, respectively. Performance improvements are particularly large for relatively rare and periodic actions such as walking and biking, improving over baselines by up to 256%. This demonstrates that explicit modeling of dependencies and periodicities in real-world behavior enables successful predictions of future actions, with implications for modeling human behavior, app personalization, and targeting of health interventions.

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