DIALKI: Knowledge Identification in Conversational Systems through Dialogue-Document Contextualization
About
Identifying relevant knowledge to be used in conversational systems that are grounded in long documents is critical to effective response generation. We introduce a knowledge identification model that leverages the document structure to provide dialogue-contextualized passage encodings and better locate knowledge relevant to the conversation. An auxiliary loss captures the history of dialogue-document connections. We demonstrate the effectiveness of our model on two document-grounded conversational datasets and provide analyses showing generalization to unseen documents and long dialogue contexts.
Zeqiu Wu, Bo-Ru Lu, Hannaneh Hajishirzi, Mari Ostendorf• 2021
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Dialogue Generation | Wizard of Wikipedia (WoW) Seen (test) | BLEU-125 | 13 | |
| Dialogue Generation | CMU-DoG (test) | BLEU-115.83 | 13 | |
| Knowledge-Grounded Dialogue Generation | Wizard of Wikipedia unseen (test) | BLEU-125.26 | 11 |
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