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Encoding Explanatory Knowledge for Zero-shot Science Question Answering

International Conference on Computational Semantics (IWCS), 2021
12 May 2021
Zili Zhou
Marco Valentino
Dónal Landers
André Freitas
ArXiv (abs)PDFHTML
Abstract

This paper describes N-XKT (Neural encoding based on eXplanatory Knowledge Transfer), a novel method for the automatic transfer of explanatory knowledge through neural encoding mechanisms. We demonstrate that N-XKT is able to improve accuracy and generalization on science Question Answering (QA). Specifically, by leveraging facts from background explanatory knowledge corpora, the N-XKT model shows a clear improvement on zero-shot QA. Furthermore, we show that N-XKT can be fine-tuned on a target QA dataset, enabling faster convergence and more accurate results. A systematic analysis is conducted to quantitatively analyze the performance of the N-XKT model and the impact of different categories of knowledge on the zero-shot generalization task.

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