Papers by Yuji Naraki

1 papers
Evaluating the Effects of Embedding with Speaker Identity Information in Dialogue Summarization (2022.lrec-1)

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Challenge: Existing methods for automatic dialogue summarization do not take into account speaker identity information, but instead use sinusoidal functions to embed speaker information at the less informative part of the position embedding.
Approach: They propose to embed speaker identity information into a dialogue transcript encoder to address this issue and reduce the "who said what"-related errors.
Outcome: The proposed method improves the convergence of the model in training and increases the average ROUGE scores of the generated summaries in comparison to existing methods.

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