心理健康监测的半监督学习与监督学习:躁郁症案例研究

Gabriella Casalino, Giovanna Castellano, O. Hryniewicz, Daniel Leite, Karol Opara, Weronika Radziszewska, Katarzyna Kaczmarek-Majer
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引用次数: 0

摘要

摘要 语音声学特征有望成为心理健康监测的客观标记。专门的智能手机应用程序可以在不影响患者日常活动的情况下收集此类声学数据。然而,对患者精神状态的精神评估通常是每隔几个月才进行一次。因此,只有一小部分声音数据被标记并适用于监督学习。大部分与心理健康监测相关的工作都将考虑范围局限于使用预定义的基本真实时间段的标记数据。另一方面,半监督方法可以利用整个数据集,利用未标记数据部分的规律性来提高模型的预测能力。为了评估半监督学习方法的适用性,我们讨论了一些最先进的半监督分类器,即标签扩散、标签传播、半监督支持向量机和自训练分类器。我们使用从双相情感障碍患者那里获得的真实世界数据,比较了不同方法与基准监督学习方法的性能。实验结果表明,半监督学习算法在预测躁郁症发作方面优于监督算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi–Supervised vs. Supervised Learning for Mental Health Monitoring: A Case Study on Bipolar Disorder
Abstract Acoustic features of speech are promising as objective markers for mental health monitoring. Specialized smartphone apps can gather such acoustic data without disrupting the daily activities of patients. Nonetheless, the psychiatric assessment of the patient’s mental state is typically a sporadic occurrence that takes place every few months. Consequently, only a slight fraction of the acoustic data is labeled and applicable for supervised learning. The majority of the related work on mental health monitoring limits the considerations only to labeled data using a predefined ground-truth period. On the other hand, semi-supervised methods make it possible to utilize the entire dataset, exploiting the regularities in the unlabeled portion of the data to improve the predictive power of a model. To assess the applicability of semi-supervised learning approaches, we discuss selected state-of-the-art semi-supervised classifiers, namely, label spreading, label propagation, a semi-supervised support vector machine, and the self training classifier. We use real-world data obtained from a bipolar disorder patient to compare the performance of the different methods with that of baseline supervised learning methods. The experiment shows that semi-supervised learning algorithms can outperform supervised algorithms in predicting bipolar disorder episodes.
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