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Inductive Gaussian representation of user-specific information for personalized stress-level prediction

机译:用于个性化压力级预测的用户特定信息的归纳高斯表示

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The accurate prediction of stress in a person's life has a significant effect on improving personal health and the national economy. Since individuals have different historical circumstances and personality traits, stress symptoms and levels may vary from person to person. Thus, most studies on stress prediction pay attention to personalized models, which determine the personal stress level using user-specific information and heterogeneous stress-related data. However, these models cannot elaborately handle the uncertainty caused by the sparsity, data imbalance, irregularity, and high-dimensionality of user-specific information. In particular, out-ofsample users increase uncertainty. To cope with the problem, we propose a personalized stress-level prediction model with inductive Gaussian representation (PSP-IGR), which exploits heterogeneous inputs with a unified end-to-end approach. PSP-IGR extracts feature vectors from the heterogeneous inputs via Gaussian sampling, domain rules, and deep learning, depending on the characteristics of each input. Especially, PSP-IGR inductively generates a Gaussian feature vector called IGR by Gaussian sampling from the shared contents of user-specific information. Thus, PSP-IGR not only generalizes to both in-sample and out-of-sample users effectively but also deals with the uncertainty problem caused by limitations of healthcare datasets. Also, since we fuse the extracted feature vectors considering their characteristics (Gaussian and point vectors), we can preserve the expressiveness of each feature vector. Experiments on a real-world dataset, including survey results, wearable sensor signals, and contexts, demonstrate that PSP-IGR shows higher accuracy in predicting individual stress-level than previous models.
机译:在一个人的生活中对压力的准确预测对改善个人健康和国民经济有重大影响。由于个人具有不同的历史环境和人格特征,因此压力症状和水平可能因人的人而异。因此,大多数关于压力预测的研究都会注意使用特定于用户特定信息和异构应力相关数据来确定个人压力水平的个性化模型。然而,这些模型不能精心制作由用户特定信息的稀疏性,数据不平衡,不规则性和高维度引起的不确定性。特别是,脱离用户的用户增加不确定性。为了应对问题,我们提出了一种具有归纳高斯表示(PSP-IGR)的个性化应力级预测模型,其利用统一的端到端方法利用异构输入。 PSP-IGR通过高斯采样,域规则和深度学习从异构输入中提取特征向量,具体取决于每个输入的特性。特别地,PSP-IGR通过来自用户特定信息的共享内容的高斯采样来感应地生成称为IGR的高斯特征向量。因此,PSP-IGR仅推广到样本内和样本用户的用户,而且还涉及由医疗保健数据集的限制引起的不确定性问题。此外,由于我们熔合提取的特征向量,考虑到它们的特性(高斯和点向量),我们可以保留每个特征向量的表现力。在真实世界数据集上的实验,包括调查结果,可穿戴传感器信号和上下文,证明PSP-IGR显示出比以前模型的单个应力水平更高的准确性。

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