Inquisitive Question Generation for High Level Text Comprehension
Inquisitive probing questions come naturally to humans in a variety of settings, but is a challenging task for automatic systems. One natural type of question to ask tries to fill a gap in knowledge during text comprehension, like reading a news article: we might ask about background information, de...
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Zusammenfassung: | Inquisitive probing questions come naturally to humans in a variety of
settings, but is a challenging task for automatic systems. One natural type of
question to ask tries to fill a gap in knowledge during text comprehension,
like reading a news article: we might ask about background information, deeper
reasons behind things occurring, or more. Despite recent progress with
data-driven approaches, generating such questions is beyond the range of models
trained on existing datasets.
We introduce INQUISITIVE, a dataset of ~19K questions that are elicited while
a person is reading through a document. Compared to existing datasets,
INQUISITIVE questions target more towards high-level (semantic and discourse)
comprehension of text. We show that readers engage in a series of pragmatic
strategies to seek information. Finally, we evaluate question generation models
based on GPT-2 and show that our model is able to generate reasonable questions
although the task is challenging, and highlight the importance of context to
generate INQUISITIVE questions. |
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DOI: | 10.48550/arxiv.2010.01657 |