基于决策树分类的SVM算法对Covid-19在线错误信息识别准确率的比较分析

N. Pravallika, Dr.K. Sashi Rekha
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引用次数: 0

摘要

目的:提高SVM算法对COVID-19错误信息预测的准确率。材料与方法:对样本量为20的支持向量机(SVM)和样本量为20的决策树分类进行不同时间的迭代,预测covid - 19错误信息的准确率。支持向量机采用新颖的聚核函数,将数据集映射到高维空间,有助于提高准确率。结果与讨论:SVM的准确率(94.48%)明显优于Decision Tree的准确率(93%)。支持向量机与决策树之间有统计学意义(p=0.000) (p<0.05独立样本t检验)。结论:基于新聚核的支持向量机可以更准确地预测COVID-19的错误信息百分比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Analysis of Identifying Accuracy of Online Misinformation of Covid-19 Using SVM Algorithm with Decision Tree Classification
Aim: To improve the accuracy percentage of predicting misinformation about COVID-19 using SVM algorithm. Materials and methods: Support Vector Machine (SVM) with sample size = 20 and Decision Tree classification with sample size = 20 was iterated at different times for predicting the accuracy percentage of misinformation about COVID19. The Novel Poly kernel function used in SVM maps the dataset into higher dimensional space which helps to improve accuracy percentage. Results and Discussion: SVM has significantly better accuracy (94.48%) compared to Decision Tree accuracy (93%). There was a statistical significance between SVM and the Decision Tree (p=0.000) (p<0.05 Independent Sample T-test). Conclusion: SVM with Novel Poly kernel helps in predicting with more accuracy the percentage of misinformation about COVID-19.
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来源期刊
Alinteri Journal of Agriculture Sciences
Alinteri Journal of Agriculture Sciences AGRICULTURE, MULTIDISCIPLINARY-
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