A Novel Framework of Network Packet Loss Detection Using Random Forest Algorithm over Support Vector Machine Learning Algorithms to Improve Accuracy

NV Midhun Sai, Madderi Sivalingam Saravanan, P. Subramanian
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Abstract

The objective of this paper is to employ a novel framework of network packet loss detection with increased accuracy rate using Novel Random Forest classifier compared to a Support Vector Machine (SVM) Classifier. Materials & Procedures: The data set used in this study utilizes the publicly available Kaggle network traffic data set and UCI machine learning repositories. The sample size of network packet loss detection with improved accuracy rate sample size was 50 (Groups 1 and 2 each had 25 participants), and the computation was performed using a G-power of 0.8, with alpha and beta values of 0.05 and 0.2 and a 95% confidence interval. A network packet loss detection with improved accuracy rate is performed by Random Forest (RF) whereas multiple samples $(\mathrm{N}=10\mathrm{A})$ SVM were a number of samples $(\mathrm{N}=10)$ Results: The Novel Random Forest classifier has 93.56% higher accuracy rates in comparison to the accuracy rate of SVM is 89.23%. There exists a statistical significance difference between two groups $(\mathrm{p}=0.0231;\mathrm{p} < 0.05)$ with confidence interval 95%. Conclusion: Novel Random Forest when compared, a classifier offers more accurate results. to SVM for network packet loss detection with improved accuracy rate.
基于支持向量机器学习算法的随机森林网络丢包检测新框架
本文的目标是采用一种新的网络丢包检测框架,与支持向量机(SVM)分类器相比,使用新颖的随机森林分类器提高了准确率。材料与程序:本研究中使用的数据集利用了公开可用的Kaggle网络流量数据集和UCI机器学习存储库。提高准确率的网络丢包检测样本量为50(第1组和第2组各25人),采用g幂为0.8进行计算,alpha和beta值分别为0.05和0.2,置信区间为95%。随机森林(Random Forest, RF)对网络丢包进行了准确率更高的检测,而多样本$(\mathrm{N}=10\mathrm{A})$ SVM为多个样本$(\mathrm{N}=10)$结果:与准确率为89.23%的SVM相比,新型随机森林分类器的准确率提高了93.56%。两组间差异有统计学意义$(\ mathm {p}=0.0231;\ mathm {p} < 0.05)$,置信区间为95%。结论:与Novel Random Forest相比,分类器提供了更准确的结果。将SVM用于网络丢包检测,准确率提高。
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