The authors introduce the task of asking clarifying questions for open-domain information-seeking conversations, collect the Qulac dataset from TREC topics, and propose a retrieval framework that outperforms baselines with an oracle showing 170% P@1 gain.
Answer-based Adversarial Training for Generating Clarification Questions
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abstract
We present an approach for generating clarification questions with the goal of eliciting new information that would make the given textual context more complete. We propose that modeling hypothetical answers (to clarification questions) as latent variables can guide our approach into generating more useful clarification questions. We develop a Generative Adversarial Network (GAN) where the generator is a sequence-to-sequence model and the discriminator is a utility function that models the value of updating the context with the answer to the clarification question. We evaluate on two datasets, using both automatic metrics and human judgments of usefulness, specificity and relevance, showing that our approach outperforms both a retrieval-based model and ablations that exclude the utility model and the adversarial training.
fields
cs.CL 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Asking Clarifying Questions in Open-Domain Information-Seeking Conversations
The authors introduce the task of asking clarifying questions for open-domain information-seeking conversations, collect the Qulac dataset from TREC topics, and propose a retrieval framework that outperforms baselines with an oracle showing 170% P@1 gain.