Storytelling with Dialogue: A Critical Role Dungeons and Dragons Dataset
- Revanth Rameshkumar ,
- Peter Bailey
ACL 2020 - The 58th Annual Meeting of the Association for Computational Linguistics |
Organized by Association for Computational Linguistics
The CRD3 dataset is available for download at https://github.com/RevanthRameshkumar/CRD3
This paper describes the Critical Role Dungeons and Dragons Dataset (CRD3) and related analyses. Critical Role is an unscripted, live-streamed show where a fixed group of people play Dungeons and Dragons, an open-ended role-playing game. The dataset is collected from 159 Critical Role episodes transcribed to text dialogues, consisting of 398,682 turns. It also includes corresponding abstractive summaries collected from the Fandom wiki. The dataset is linguistically unique in that the narratives are generated entirely through player collaboration and spoken interaction. For each dialogue, there are a large number of turns, multiple abstractive summaries with varying levels of detail, and semantic ties to the previous dialogues. In addition, we provide a data augmentation method that produces 34,243 summary dialogue chunk pairs to support current neural ML approaches, and we provide an abstractive summarization benchmark and evaluation.
Copyright 2020 Association for Computational Linguistics (ACL)