Question Generation through Transfer Learning
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Date
2020
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Abstract
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An automatic question generation (QG) system aims to produce questions from a text, such as a sentence or a paragraph. This system can be useful on the frontline of education, as making questions is a time-consuming and expert-participating craft. Traditional approaches are mainly based on heuristic and hand-crafted rules to transduce a declarative sentence into a related interrogative sentence. In this work, we propose a data-driven approach, which leverages a neural sequence-to-sequence framework with various transfer learning strategies to capture the underlying information of making a question, on a target domain with rare training pairs. Our experiment shows this modified model is capable to generate satisfactory results to some extent.
An automatic question generation (QG) system aims to produce questions from a text, such as a sentence or a paragraph. This system can be useful on the frontline of education, as making questions is a time-consuming and expert-participating craft. Traditional approaches are mainly based on heuristic and hand-crafted rules to transduce a declarative sentence into a related interrogative sentence. In this work, we propose a data-driven approach, which leverages a neural sequence-to-sequence framework with various transfer learning strategies to capture the underlying information of making a question, on a target domain with rare training pairs. Our experiment shows this modified model is capable to generate satisfactory results to some extent.
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none, question generation, sequence-to-sequence model, transfer learning