Phuong-Anh Chu
2026
DAL Team at PsyDefDetect: From Supervised Encoders to Hierarchical LLM-RAG for Psychological Defense Detection
Duc-Luong Tran | Phuong-Anh Chu | Hoang-Dat Do | Tu-Phuong Mai | Duy-Cat Can | Hoang-Quynh Le
Proceedings of the BioNLP 2026 (Shared Tasks)
Duc-Luong Tran | Phuong-Anh Chu | Hoang-Dat Do | Tu-Phuong Mai | Duy-Cat Can | Hoang-Quynh Le
Proceedings of the BioNLP 2026 (Shared Tasks)
The PsyDefDetect shared task focuses on classifying nine psychological defense mechanisms in multi-turn dialogues, a problem complicated by severe label imbalance and the implicit, context-dependent nature of defenses. In this work, we investigate several approaches for dialogue-level defense detection, including supervised baselines and large language model (LLM)-based pipelines. Our primary system is a retrieval-augmented LLM framework with hierarchical prediction and lightweight heuristics for decision calibration. Experiments on the PSYDEFCONV dataset show that LLM-based methods improve overall performance compared to supervised baselines, but still struggle with fine-grained distinctions, especially for minority labels. These findings highlight the challenges of modeling implicit psychological constructs in dialogue.
HOPE: Hybrid Optimized Parallel Encoding with Supervised and Unsupervised Semantic Fusion for Depression Symptom Detection
Tu-Phuong Mai | Minh-Ha H. Le | Duc-Luong Tran | Phuong-Anh Chu | Duy-Cat Can | Hoang-Quynh Le
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Tu-Phuong Mai | Minh-Ha H. Le | Duc-Luong Tran | Phuong-Anh Chu | Duy-Cat Can | Hoang-Quynh Le
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Timely detection of depression symptoms is essential for early intervention, and the continuous stream of user-generated content on social media provides an ideal source for this purpose. To address this challenge, we propose HOPE, a Hybrid Optimized Parallel Encoding framework that combines supervised symptom relevance signals with unsupervised intrinsic semantic clustering. This parallel design enables robust symptom detection under limited labeled data and introduces a distinctive semantic-similarity perspective with automatic class-anchor adjustment. We also propose an optimized hybrid semantic fusion mechanism to combine supervised and unsupervised scores through a learnable module. We evaluate our system on multiple benchmark datasets and surpass previous approaches, demonstrating its effectiveness in detecting fine-grained symptoms and early warning of mental health risk. Source code is available at https://github.com/candleMind/hope.