Retrieving Chinese Questions and Answers Based on Deep-Learning Algorithm

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Abstract

Chinese open-domain reading comprehension question answering is a task in the field of natural language processing. Traditional neural network-based methods lack interpretability in answer reasoning when addressing open-domain reading comprehension questions. This research is grounded in cognitive science’s dual-process theory, where System One performs question reading and System Two handles reasoning, resulting in a novel Chinese open-domain question-answering retrieval algorithm. The experiment employs the publicly available WebQA dataset and is compared against other reading comprehension methods, with the F1-score reaching 78.66%, confirming the effectiveness of the proposed approach. Therefore, adopting a reading comprehension question-answering model based on cognitive graphs can effectively address Chinese reading comprehension questions.

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Wang, H., Li, J., & Wang, J. (2023). Retrieving Chinese Questions and Answers Based on Deep-Learning Algorithm. Mathematics, 11(18). https://doi.org/10.3390/math11183843

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