第一人称代词的深度表征用于预测抑郁症症状严重程度

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Xinyang Ren, Hannah A Burkhardt, Patricia A Areán, Thomas D Hull, Trevor Cohen
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引用次数: 0

摘要

先前的研究表明,通过分析第一人称单数代词的使用,可以了解个人的精神状态,尤其是抑郁症状的严重程度。这些发现是通过计算文本数据中第一人称单数代词的使用频率得出的。然而,计数并不能捕捉到这些代词是如何使用的。神经语言建模的最新进展利用了生成上下文嵌入的方法。在本研究中,我们试图利用从语境化语言表征模型中获得的第一人称代词嵌入来捕捉这些代词的使用方式,从而分析心理状态。评估使用了在线心理治疗期间发送的去身份文本信息,每周对抑郁严重程度进行评估。结果表明,与标准分类标记嵌入和基于频率的代词分析结果相比,语境化第一人称代词嵌入在预测抑郁症状严重程度方面更具优势。这表明第一人称代词的上下文表征可以提高抑郁症状患者所用语言的预测效用。
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Deep Representations of First-person Pronouns for Prediction of Depression Symptom Severity.

Prior work has shown that analyzing the use of first-person singular pronouns can provide insight into individuals' mental status, especially depression symptom severity. These findings were generated by counting frequencies of first-person singular pronouns in text data. However, counting doesn't capture how these pronouns are used. Recent advances in neural language modeling have leveraged methods generating contextual embeddings. In this study, we sought to utilize the embeddings of first-person pronouns obtained from contextualized language representation models to capture ways these pronouns are used, to analyze mental status. De-identified text messages sent during online psychotherapy with weekly assessment of depression severity were used for evaluation. Results indicate the advantage of contextualized first-person pronoun embeddings over standard classification token embeddings and frequency-based pronoun analysis results in predicting depression symptom severity. This suggests contextual representations of first-person pronouns can enhance the predictive utility of language used by people with depression symptoms.

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