Bridging The Gap: Entailment Fused-T5 for Open-retrieval Conversational Machine Reading Comprehension

Zhang, Xiao, Huang, Heyan, Chi, Zewen, Mao, Xian-Ling

arXiv.org Artificial Intelligence 

Open-retrieval conversational machine reading comprehension (OCMRC) simulates reallife conversational interaction scenes. Machines are required to make a decision of Yes/No/Inquire or generate a follow-up question when the decision is Inquire based on retrieved rule texts, user scenario, user question, and dialogue history. Recent studies explored the methods to reduce the information gap between decision-making and question generation and thus improve the performance of generation. However, the information gap still exists because these pipeline structures are still limited in decision-making, span extraction, and question rephrasing three stages. Decision-making and generation are reasoning separately, and the entailment reasoning utilized in decision-making is hard to share through all stages. To tackle the above problem, we proposed a novel one-stage endto-end framework, called Entailment Fused-Figure 1: An example in the OCMRC dataset. Given T5 (EFT), to bridge the information gap between the user scenario and user question, machines are decision-making and generation in a required to first retrieve related rule texts in the global understanding manner. The extensive knowledge database, and then make a decision of experimental results demonstrate that our proposed Yes/No/Inquire or generate a follow-up question framework achieves new state-of-the-art when the decision is Inquire based on retrieved rule performance on the OR-ShARC benchmark.

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