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Classifying Depression in Imbalanced Datasets Using an Autoencoder- Based Anomaly Detection Approach

机译:使用基于AutoEncoder的异常检测方法对不平衡数据集进行分类抑郁症

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Depression is the most prevalent mental health ailment in the United States, affecting 15% of the population. Untreated depression can significantly decrease quality of life, physical health, and has significant economic and societal costs. The traditional method of diagnosing depression requires the patient to respond to medical questionnaires and is subjective. Passive methods to autonomously detect depression are desirable. Prior work on smartphone sensing of depression has utilized machine learning classification of smartphone sensor data. However, as with many ailments, the percentage of afflicted users in most populations is small compared with those unaffected, leading to severe class imbalance. In this work, we explore anomaly detection methods as a method for mitigating class imbalance for depression detection. Our approach adopts a multi-stage machine learning pipeline. First, using autoen-coders, we project the mobility features of the majority class (undepressed users). Thereafter, the trained autoencoder then classifies a test set of users as either depressed (anomalous) or not depressed (inliers) using a One Class SVM algorithm. Our method, when applied to the real-world StudentLife data set shows that even with an extremely imbalanced dataset, our method is able to detect individuals with depression symptoms with an AUC-ROC of 0.92, significantly outperforming traditional machine learning classification approaches.
机译:抑郁症是美国最普遍的心理健康疾病,影响了15%的人口。未经治疗的抑郁症可以显着降低生活质量,身体健康,具有重要的经济和社会成本。传统诊断抑郁症方法要求患者对医疗问卷进行响应,是主观性的。可被动方法自主检测抑郁症是理想的。在智能手机传感的事前,使用智能手机传感器数据的机器学习分类。然而,与许多疾病一样,大多数人群中受过折磨的用户的百分比与未受影响的人相比,导致严重的阶级失衡。在这项工作中,我们探索异常检测方法作为减轻抑郁检测类别不平衡的方法。我们的方法采用多级机器学习管道。首先,使用AutoEn-Coderser,我们投影了多数类(未抑制用户)的移动性功能。此后,训练有素的autoEncoder然后使用一类SVM算法将用户的测试集或不抑制(inliers)分类。我们的方法,当应用于现实世界学生的数据集时表明,即使具有极其不平衡的数据集,我们的方法也能够检测到具有0.92的AUC-ROC的抑郁症状的个体,显着优于传统机器学习分类方法。

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