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Другие публикации лиц с тем же именем

Priming Ancient Korean Neural Machine Translation., , , , , и . LREC, стр. 22-28. European Language Resources Association, (2022)Uncovering the Risks and Drawbacks Associated With the Use of Synthetic Data for Grammatical Error Correction., , , , , , и . IEEE Access, (2023)PU-GEN: Enhancing generative commonsense reasoning for language models with human-centered knowledge., , , , , , , и . Knowl. Based Syst., (2022)BTS: Back TranScription for Speech-to-Text Post-Processor using Text-to-Speech-to-Text., , , , , , и . WAT@ACL/IJCNLP, стр. 106-116. Association for Computational Linguistics, (2021)KEBAP: Korean Error Explainable Benchmark Dataset for ASR and Post-processing., , , , , , и . EMNLP, стр. 4798-4815. Association for Computational Linguistics, (2023)Length-aware Byte Pair Encoding for Mitigating Over-segmentation in Korean Machine Translation., , , , , , , , и . ACL (Findings), стр. 2287-2303. Association for Computational Linguistics, (2024)A Dog Is Passing Over The Jet? A Text-Generation Dataset for Korean Commonsense Reasoning and Evaluation., , , , , , , и . NAACL-HLT (Findings), стр. 2233-2249. Association for Computational Linguistics, (2022)QUAK: A Synthetic Quality Estimation Dataset for Korean-English Neural Machine Translation., , , , , , и . COLING, стр. 5181-5190. International Committee on Computational Linguistics, (2022)Informative Evidence-guided Prompt-based Fine-tuning for English-Korean Critical Error Detection., , , , , и . IJCNLP (1), стр. 344-358. Association for Computational Linguistics, (2023)Detecting Critical Errors Considering Cross-Cultural Factors in English-Korean Translation., , , , , , , и . LREC/COLING, стр. 4705-4716. ELRA and ICCL, (2024)