An Intelligent Medical Q&A System Based on Natural Language Processing

Q3 Engineering
Tongke Fan
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引用次数: 0

Abstract

To improve the accuracy of Chinese word splitting. With the development of Internet technology, people want to get some effective medical information from the Internet, but there are still technical difficulties for non-specialists. At the same time, the level of medical construction can not keep up with the demand of patients for medical treatment, the phenomenon of doctor-patient conflicts has not been fundamentally solved, and the problem of difficult consultation prevails. With the arrival of the era of big data and artificial intelligence, medical Q&A has been applied. In order to meet the user's need to get the correct answer as soon as possible, medical Q&A needs to have high execution efficiency. The accuracy of Chinese participle directly affects the execution efficiency of Q&A. Improving the accuracy of Chinese participle can fundamentally improve the accuracy of medical Q&A and shorten the answering time. Improvement of the Chinese Segmentation Algorithm based on BI-LSTM-CRF using natural language processing technology. Based on the same medical Q&A dataset, the medical Q&A is trained and tested under three commonly used segmentation algorithms and the segmentation algorithm designed in this paper. The experiments show that the Chinese Segmentation Algorithm studied in this paper improves the accuracy of medical Q&A and can improve the execution efficiency of medical Q&A. Based on the calculation and matching process of the same similar answers, different word-splitting methods directly affect the effect of medical Q&A in the later stage. The better the effect of segmentation, the higher the accuracy of the correct answers in medical Q&A. The improved LSTM-CRF split word accuracy designed in this paper achieves a good split word effect in the training process. Compared with the HMM segmentation algorithm, which has the best segmentation performance among the other three algorithms, the segmentation accuracy is improved, and the accuracy of the Q&A that delivers the correct answers is relatively high. Despite the improved accuracy in segmenting the medical dataset, the time complexity did not decrease much. The LSTMCRF combined network segmentation algorithm designed in this paper performs better in medical Q&A compared to other commonly used segmentation algorithms in terms of subject operating characteristics and larger regions surrounded by coordinate axes.
基于自然语言处理的智能医疗问答系统
随着互联网技术的发展,人们希望从互联网上获得一些有效的医疗信息,但对于非专业人士来说,仍然存在技术上的困难。同时,医疗建设水平跟不上患者的就医需求,医患矛盾现象没有得到根本解决,看病难问题普遍存在。随着大数据和人工智能时代的到来,医疗问答得到了应用。为了满足用户尽快得到正确答案的需求,医疗问答需要有较高的执行效率。中文分词的准确性直接影响问答的执行效率。利用自然语言处理技术改进基于 BI-LSTM-CRF 的中文分词算法。基于相同的医学问答数据集,在三种常用的分词算法和本文设计的分词算法下对医学问答进行了训练和测试,实验结果表明,本文研究的中文分词算法提高了医学问答的准确率,并能提高医学问答的执行效率。基于同类答案的计算和匹配过程,不同的分词方法直接影响医学问答的后期效果。分词效果越好,医学问答中正确答案的准确率就越高。本文设计的改进型LSTM-CRF分词准确率在训练过程中取得了良好的分词效果。与其他三种算法中分词效果最好的 HMM 分词算法相比,分词准确率有所提高,提供正确答案的问答准确率也相对较高。尽管医疗数据集的分割精度有所提高,但时间复杂度并没有降低多少。与其他常用的分割算法相比,本文设计的 LSTMCRF 组合网络分割算法在医学问答中的表现更好,在主体操作特征和坐标轴包围的较大区域方面表现更好。
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来源期刊
Recent Patents on Engineering
Recent Patents on Engineering Engineering-Engineering (all)
CiteScore
1.40
自引率
0.00%
发文量
100
期刊介绍: Recent Patents on Engineering publishes review articles by experts on recent patents in the major fields of engineering. A selection of important and recent patents on engineering is also included in the journal. The journal is essential reading for all researchers involved in engineering sciences.
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