论文标题

pirl:医疗保健的参与者不变代表性学习

PiRL: Participant-Invariant Representation Learning for Healthcare

论文作者

Cao, Zhaoyang, Yu, Han, Yang, Huiyuan, Sano, Akane

论文摘要

由于个体的异质性,在数据驱动的健康应用程序中,通用(单一适合)模型和特定于人的模型之间观察到了性能差距。但是,在现实世界应用中,由于新用户适应性问题和系统复杂性等,通用模型通常更有利。拟议的框架利用最大的平均差异(MMD)损失和域 - 反向训练来鼓励模型学习参与者不变的表示。此外,将三胞胎损失限制了代表层间比对的模型,用于优化下游健康应用的学习表示。我们在两个与身心健康有关的公共数据集上评估了我们的框架,分别用于检测睡眠呼吸暂停和压力。作为初步结果,我们发现所提出的方法显示出与基线相比的准确性增加了5%。

Due to individual heterogeneity, performance gaps are observed between generic (one-size-fits-all) models and person-specific models in data-driven health applications. However, in real-world applications, generic models are usually more favorable due to new-user-adaptation issues and system complexities, etc. To improve the performance of the generic model, we propose a representation learning framework that learns participant-invariant representations, named PiRL. The proposed framework utilizes maximum mean discrepancy (MMD) loss and domain-adversarial training to encourage the model to learn participant-invariant representations. Further, a triplet loss, which constrains the model for inter-class alignment of the representations, is utilized to optimize the learned representations for downstream health applications. We evaluated our frameworks on two public datasets related to physical and mental health, for detecting sleep apnea and stress, respectively. As preliminary results, we found the proposed approach shows around a 5% increase in accuracy compared to the baseline.

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