非线性个性化预测的神经混合效应

Torsten Wörtwein, Nicholas B. Allen, Lisa B. Sheeber, Randy P. Auerbach, Jeffrey F. Cohn, Louis-Philippe Morency
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引用次数: 0

摘要

个性化预测是一种机器学习方法,它根据一个人过去标记的观察结果来预测一个人未来的观察结果,通常用于顺序任务,例如预测日常情绪评级。当进行个性化预测时,模型可以结合两种类型的趋势:(a)人与人之间共享的趋势,即个人一般的趋势,例如周末更快乐;(b)每个人的独特趋势,即个人特定的趋势,例如压力大的每周会议。混合效应模型是一种流行的统计模型,通过结合人的一般和特定参数来研究这两种趋势。尽管通过将线性混合效应模型与神经网络集成在一起,在机器学习中越来越受欢迎,但这些集成目前仅限于线性的个人特定参数:排除了非线性的个人特定趋势。在本文中,我们提出了神经混合效应(NME)模型,以可扩展的方式优化神经网络中任何位置的非线性个人特定参数1。NME将神经网络优化的效率与非线性混合效应建模相结合。根据经验,我们观察到NME在六个单模态和多模态数据集上提高了性能,包括预测日常情绪的智能手机数据集和预测一半母亲经历抑郁症状的母亲-青少年数据集的情感状态序列。此外,我们评估了两种模型架构的NME,包括用于预测情感状态序列的神经条件随机场(CRF),其中CRF学习情感状态之间的非线性个人特定时间转换。对母亲-青少年数据集的这些个人特异性转变的分析显示了与母亲抑郁症状相关的可解释趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Mixed Effects for Nonlinear Personalized Predictions
Personalized prediction is a machine learning approach that predicts a person’s future observations based on their past labeled observations and is typically used for sequential tasks, e.g., to predict daily mood ratings. When making personalized predictions, a model can combine two types of trends: (a) trends shared across people, i.e., person-generic trends, such as being happier on weekends, and (b) unique trends for each person, i.e., person-specific trends, such as a stressful weekly meeting. Mixed effect models are popular statistical models to study both trends by combining person-generic and person-specific parameters. Though linear mixed effect models are gaining popularity in machine learning by integrating them with neural networks, these integrations are currently limited to linear person-specific parameters: ruling out nonlinear person-specific trends. In this paper, we propose Neural Mixed Effect (NME) models to optimize nonlinear person-specific parameters anywhere in a neural network in a scalable manner1. NME combines the efficiency of neural network optimization with nonlinear mixed effects modeling. Empirically, we observe that NME improves performance across six unimodal and multimodal datasets, including a smartphone dataset to predict daily mood and a mother-adolescent dataset to predict affective state sequences where half the mothers experience symptoms of depression. Furthermore, we evaluate NME for two model architectures, including for neural conditional random fields (CRF) to predict affective state sequences where the CRF learns nonlinear person-specific temporal transitions between affective states. Analysis of these person-specific transitions on the mother-adolescent dataset shows interpretable trends related to the mother’s depression symptoms.
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