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Research on Tibetan medicine intelligent question answering system integrating confrontation training and reinforcement learning

Published: 22 December 2021 Publication History

Abstract

In this study, a knowledge graph (KG) based Tibetan medicine intelligent question answering (QA) system model was proposed based on an adversarial learning generative network model, in an attempt to alleviate the scarcity of medical resources, promote the heritage and innovation of Tibetan medicine, and ease the shortage of Tibetan medical information. In this model, the simulated answers were generated via adversarial learning, and subsequently the reinforcement learning was applied for feedback-based optimization, with the ultimate aim of enhancing the accuracy rate of this model. Besides, a triple extraction method based on Tibetan features was proposed to construct a KG dialog set. Finally, this model was subjected to an experiment in Chinese and Tibetan datasets, with the results indicating that the accuracy of this intelligent QA model incorporating adversarial networks and reinforcement learning was higher than other models.

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  1. Research on Tibetan medicine intelligent question answering system integrating confrontation training and reinforcement learning

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    ISAIMS '21: Proceedings of the 2nd International Symposium on Artificial Intelligence for Medicine Sciences
    October 2021
    593 pages
    ISBN:9781450395588
    DOI:10.1145/3500931
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    Published: 22 December 2021

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    Author Tags

    1. Generate countermeasure network
    2. Knowledge extraction
    3. Knowledge graph
    4. Reinforcement learning
    5. Tibetan medicine

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