DeBERTa-V3-base with focal loss, discourse features, and LLM-augmented data for minority classes achieves 0.76 Macro F1 on clarity-level classification of political QA pairs, ranking 8th in SemEval-2026 Task 6.
On Identifying Questions, Replies, and Non-Replies in Political Interviews , volume =
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Duluth at SemEval-2026 Task 6: DeBERTa with LLM-Augmented Data for Unmasking Political Question Evasions
DeBERTa-V3-base with focal loss, discourse features, and LLM-augmented data for minority classes achieves 0.76 Macro F1 on clarity-level classification of political QA pairs, ranking 8th in SemEval-2026 Task 6.