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Main Authors: Schmidt, Fabian, Ravan, Seyedehmoniba, Vlassov, Vladimir
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.04476
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author Schmidt, Fabian
Ravan, Seyedehmoniba
Vlassov, Vladimir
author_facet Schmidt, Fabian
Ravan, Seyedehmoniba
Vlassov, Vladimir
contents Accurate and interpretable predictions of depression severity are essential for clinical decision support, yet existing models often lack uncertainty estimates and temporal modeling. We propose PTTSD, a Probabilistic Textual Time Series Depression Detection framework that predicts PHQ-8 scores from utterance-level clinical interviews while modeling uncertainty over time. PTTSD includes sequence-to-sequence and sequence-to-one variants, both combining bidirectional LSTMs, self-attention, and residual connections with Gaussian or Student-t output heads trained via negative log-likelihood. Evaluated on E-DAIC and DAIC-WOZ, PTTSD achieves state-of-the-art performance among text-only systems (e.g., MAE = 3.85 on E-DAIC, 3.55 on DAIC) and produces well-calibrated prediction intervals. Ablations confirm the value of attention and probabilistic modeling, while comparisons with MentalBERT establish generality. A three-part calibration analysis and qualitative case studies further highlight the interpretability and clinical relevance of uncertainty-aware forecasting.
format Preprint
id arxiv_https___arxiv_org_abs_2511_04476
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Probabilistic Textual Time Series Depression Detection
Schmidt, Fabian
Ravan, Seyedehmoniba
Vlassov, Vladimir
Computation and Language
Accurate and interpretable predictions of depression severity are essential for clinical decision support, yet existing models often lack uncertainty estimates and temporal modeling. We propose PTTSD, a Probabilistic Textual Time Series Depression Detection framework that predicts PHQ-8 scores from utterance-level clinical interviews while modeling uncertainty over time. PTTSD includes sequence-to-sequence and sequence-to-one variants, both combining bidirectional LSTMs, self-attention, and residual connections with Gaussian or Student-t output heads trained via negative log-likelihood. Evaluated on E-DAIC and DAIC-WOZ, PTTSD achieves state-of-the-art performance among text-only systems (e.g., MAE = 3.85 on E-DAIC, 3.55 on DAIC) and produces well-calibrated prediction intervals. Ablations confirm the value of attention and probabilistic modeling, while comparisons with MentalBERT establish generality. A three-part calibration analysis and qualitative case studies further highlight the interpretability and clinical relevance of uncertainty-aware forecasting.
title Probabilistic Textual Time Series Depression Detection
topic Computation and Language
url https://arxiv.org/abs/2511.04476