Structural Stress and Learned Helplessness in Afghanistan: A Multi-Layer Analysis of the AFSTRESS Dari Corpus
arXiv cs.CL / 3/31/2026
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Key Points
- The paper introduces AFSTRESS, a first-of-its-kind multi-label Dari corpus of 737 self-reported stress narratives collected during an ongoing humanitarian crisis in Afghanistan.
- The dataset supports analysis across computational modeling (multi-label classification), social factors (structural drivers and gender disparities), and psychological patterns (e.g., learned helplessness and chronic stress).
- Results indicate structural stressors predominate, with “uncertain future” (62.6%) and “education closure” (60.0%) outweighing the reported emotional states.
- The strongest label co-occurrence is between hopelessness and uncertain future (J = 0.388), suggesting measurable emotional–stressor linkage.
- Baseline experiments show character TF-IDF with Linear SVM reaching Micro-F1 0.663 and Macro-F1 0.651, with threshold tuning further improving Micro-F1 by 10.3 points, indicating viable modeling despite the complexity of the labels.
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