UArizona at the CLEF eRisk 2017 Pilot Task: Linear and Recurrent Models for Early Depression Detection.

CEUR workshop proceedings Pub Date : 2017-09-01 Epub Date: 2017-07-13
Farig Sadeque, Dongfang Xu, Steven Bethard
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引用次数: 0

Abstract

The 2017 CLEF eRisk pilot task focuses on automatically detecting depression as early as possible from a users' posts to Reddit. In this paper we present the techniques employed for the University of Arizona team's participation in this early risk detection shared task. We leveraged external information beyond the small training set, including a preexisting depression lexicon and concepts from the Unified Medical Language System as features. For prediction, we used both sequential (recurrent neural network) and non-sequential (support vector machine) models. Our models perform decently on the test data, and the recurrent neural models perform better than the non-sequential support vector machines while using the same feature sets.

Abstract Image

2017年CLEF风险试点任务:早期抑郁症检测的线性和循环模型。
2017年CLEF eRisk试点任务的重点是尽早从用户在Reddit上的帖子中自动检测抑郁症。在本文中,我们展示了亚利桑那大学团队参与这一早期风险检测共享任务所采用的技术。我们利用了小训练集之外的外部信息,包括先前存在的抑郁症词汇和统一医学语言系统的概念作为特征。对于预测,我们使用了顺序(循环神经网络)和非顺序(支持向量机)模型。我们的模型在测试数据上表现良好,并且在使用相同的特征集时,循环神经模型比非顺序支持向量机表现更好。
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