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LLMを活用した音声ベースの心理的危機アセスメント
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ポイント
- 音声通話における感情的信号を捉えるため、非言語的感情キューを音声トランスクリプトに挿入する手法を提案した。
- 診断推論チェーンを生成する訓練戦略を導入し、分類性能の向上を図った。
- 提案手法により、心理的危機レベルの3クラス分類タスクでF1スコア0.802を達成した。
Abstract
Psychological support hotlines provide critical support for individuals experiencing mental health emergencies, yet current assessments largely rely on human operators whose judgments may vary with professional experience and are constrained by limited staffing resources. This paper proposes a large language model (LLM)-based framework for automated crisis level classification, a key indicator that supports many downstream tasks and improves the overall quality of hotline services. To better capture emotional signals in spoken conversations, we introduce a paralinguistic injection method that inserts identified non-verbal emotional cues into speech transcripts, enabling LLM-based reasoning to incorporate critical acoustic nuances. In addition, we propose a reasoning-enhanced training strategy that trains the model to generate diagnostic reasoning chains as an auxiliary task, which serves as a regulariser to improve classification performance. Combined with data augmentation, our final system achieves a macro F1-score of 0.802 and an accuracy of 0.805 on the three-class classification task under 5-fold cross-validation.
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