Ikumi Ito
2023
Investigating the Effectiveness of Multiple Expert Models Collaboration
Ikumi Ito
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Takumi Ito
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Jun Suzuki
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Kentaro Inui
Findings of the Association for Computational Linguistics: EMNLP 2023
This paper aims to investigate the effectiveness of several machine translation (MT) models and aggregation methods in a multi-domain setting under fair conditions and explore a direction for tackling multi-domain MT. We mainly compare the performance of the single model approach by jointly training all domains and the multi-expert models approach with a particular aggregation strategy. We conduct experiments on multiple domain datasets and demonstrate that a combination of smaller domain expert models can outperform a larger model trained for all domain data.
TohokuNLP at SemEval-2023 Task 5: Clickbait Spoiling via Simple Seq2Seq Generation and Ensembling
Hiroto Kurita
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Ikumi Ito
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Hiroaki Funayama
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Shota Sasaki
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Shoji Moriya
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Ye Mengyu
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Kazuma Kokuta
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Ryujin Hatakeyama
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Shusaku Sone
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Kentaro Inui
Proceedings of the 17th International Workshop on Semantic Evaluation (SemEval-2023)
This paper describes our system submitted to SemEval-2023 Task 5: Clickbait Spoiling. We work on spoiler generation of the subtask 2 and develop a system which comprises two parts: 1) simple seq2seq spoiler generation and 2) post-hoc model ensembling. Using this simple method, we address the challenge of generating multipart spoiler. In the test set, our submitted system outperformed the baseline by a large margin (approximately 10 points above on the BLEU score) for mixed types of spoilers. We also found that our system successfully handled the challenge of the multipart spoiler, confirming the effectiveness of our approach.
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Co-authors
- Kentaro Inui 2
- Takumi Ito 1
- Jun Suzuki 1
- Hiroto Kurita 1
- Hiroaki Funayama 1
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