Neural generative question answering

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Abstract

This paper presents an end-to-end neural network model, named Neural Generative Question Answering (GENQA), that can generate answers to simple factoid questions, based on the facts in a knowledge-base. More specifically, the model is built on the encoder-decoder framework for sequence-to-sequence learning, while equipped with the ability to enquire the knowledge-base, and is trained on a corpus of question-answer pairs, with their associated triples in the knowledge-base. Empirical study shows the proposed model can effectively deal with the variations of questions and answers, and generate right and natural answers by referring to the facts in the knowledge-base. The experiment on question answering demonstrates that the proposed model can outperform an embedding-based QA model as well as a neural dialogue model trained on the same data.

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Yin, J., Xin, J., Lu, Z., Shang, L., Li, H., & Li, X. (2016). Neural generative question answering. In IJCAI International Joint Conference on Artificial Intelligence (Vol. 2016-January, pp. 2972–2978). International Joint Conferences on Artificial Intelligence. https://doi.org/10.18653/v1/w16-0106

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