基于LD和ANN-SoftMaxRegressor的中药文本分类研究

Fa Zhang, Hui Zhang, Xiaoling Jiang
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引用次数: 0

摘要

在中医的长期积累中,由于表达和描述的不同,出现了许多同义和不同的词语,或者同一种疾病由于临床表现的不同而被划分为不同的疾病。这种现象使得疾病数据集的维数更大且稀疏。本研究使用两个数据集(一个是uci-breast Cancer数据集,另一个是耀知网络抓取的中医数据)进行算法实验。实验证明,通过字符串编辑距离(Levenshtein distance)建立疾病词典后,进行双图平滑处理,PCA降维较低。经过ANN-SoftMax Regressor训练后,中医数据模糊症状分类更加准确,准确率达到90.95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on Text Classification of Traditional Chinese Medicine Based on LD and ANN-SoftMaxRegressor
In the long-term accumulation of traditional Chinese medicine, there are many synonymous and different words because of different expressions and descriptions, or the same disease is divided into different diseases because of different clinical manifestations. This phenomenon makes the dimension of the disease data set larger and sparse. In this study, two data sets (one is the uci-breast Cancer data set, the other is the Chinese medicine data crawled by yaozhi network) were used for algorithm experiment. It has been proved by experiments that after the establishment of the disease dictionary through the string editing distance (Levenshtein Distance), the bi-gram smoothing process is performed, and then the PCA dimension reduction is lower. After the ANN-SoftMax Regressor training, the Chinese medicine data fuzzy symptom classification is more accurate, achieving an accuracy of 90.95%.
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