通过上下文感知的合成数据扩充缓解心理防御机制分类中的数据稀缺问题 / Mitigating Data Scarcity in Psychological Defense Classification with Context-Aware Synthetic Augmentation
1️⃣ 一句话总结
本文提出了一种结合上下文感知的合成数据扩充和混合分类模型的方法,通过利用提示生成的心理防御定义质量来有效提升低资源环境下心理防御机制的分类准确性,并在公共评测任务中取得了显著优于现有系统的结果。
Psychological defense mechanisms (PDMs) are unconscious cognitive processes that modulate how individuals perceive and respond to emotional distress. Automatically classifying PDMs from text is clinically valuable but severely hindered by data scarcity and class imbalance, challenges which generative augmentation alone cannot resolve without psychological grounding. In this work, we address these challenges in the PsyDefDetect shared task (BioNLP@ACL 2026) by proposing a context-aware synthetic augmentation framework combined with a hybrid classification model. Our hybrid model integrates contextual language representations with basic clinical features, along with 150 annotated defense items. Experiments demonstrate that definition quality in prompting directly governs generation fidelity and downstream performance. Our method surpasses DMRS Co-Pilot, reaching an accuracy of 58.26% (+40.25%) and a macro-F1 of 24.62% (+15.99%), thereby establishing a strong baseline for psychologically grounded defense mechanism classification in low-resource settings. Source code is available at: this https URL.
通过上下文感知的合成数据扩充缓解心理防御机制分类中的数据稀缺问题 / Mitigating Data Scarcity in Psychological Defense Classification with Context-Aware Synthetic Augmentation
本文提出了一种结合上下文感知的合成数据扩充和混合分类模型的方法,通过利用提示生成的心理防御定义质量来有效提升低资源环境下心理防御机制的分类准确性,并在公共评测任务中取得了显著优于现有系统的结果。
源自 arXiv: 2605.14380