Thunder-KoNUBench: A Corpus-Aligned Benchmark for Korean Negation Understanding
Abstract
Large language models demonstrate degraded performance on Korean negation, which is addressed through a new sentence-level benchmark that improves model understanding through fine-tuning.
Although negation is known to challenge large language models (LLMs), benchmarks for evaluating negation understanding, especially in Korean, are scarce. We conduct a corpus-based analysis of Korean negation and show that LLM performance degrades under negation. We then introduce Thunder-KoNUBench, a sentence-level benchmark that reflects the empirical distribution of Korean negation phenomena. Evaluating 47 LLMs, we analyze the effects of model size and instruction tuning, and show that fine-tuning on Thunder-KoNUBench improves negation understanding and broader contextual comprehension in Korean.
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