Search Results for author: Takeshi Homma

Found 4 papers, 1 papers with code

Unsupervised Domain Adaptation on Question-Answering System with Conversation Data

no code implementations SIGDIAL (ACL) 2022 Amalia Adiba, Takeshi Homma, Yasuhiro Sogawa

Therefore, unlike previous studies, we propose a domain-adaptation framework of MRC under the assumption that the only available data in the target domain are human conversations between a user asking questions and an expert answering the questions.

Machine Reading Comprehension Question Answering +1

Improving the Naturalness of Simulated Conversations for End-to-End Neural Diarization

1 code implementation24 Apr 2022 Natsuo Yamashita, Shota Horiguchi, Takeshi Homma

Due to the lack of any annotated real conversational dataset, EEND is usually pretrained on a large-scale simulated conversational dataset first and then adapted to the target real dataset.

speaker-diarization Speaker Diarization

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