基于支持向量机与线性回归的短信垃圾检测

R. K, D. N
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引用次数: 0

摘要

该研究的目的是利用支持向量机(SVM)和线性回归(LR)来检测垃圾短信。研究中使用的数据集包含5573个句子,并且测量了SMS垃圾邮件检测的准确性。分类过程使用支持向量机和LR进行,样本量N=27, G-power值为80%。SVM的准确率为97.67%,高于准确率为92%的LR。准确率差异显著的p值为0.02 (p<0.05),说明SVM在实现准确率方面优于LR。
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Accurate SMS Spam Detection Using Support Vector Machine In Comparison With Linear Regression
The aim of the study is to detect SMS spam using Support Vector Machine (SVM) and linear regression (LR). The dataset used in the study contains 5573 sentences, and accuracy is measured for SMS spam detection. The classification process is carried out using SVM and LR with sample sizes of N=27, which were obtained using a G-power value of 80%. The accuracy of SVM is found to be 97.67%, which is higher than LR with an accuracy of 92%. The p-value for the significant accuracy difference is 0.02 (p<0.05), indicating that SVM performs better than LR in achieving accuracy.
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