ARTIFICIAL NEURAL NETWORK ANALYSIS OF SOME SELECTED KDD CUP 99 DATASET FOR INTRUSION DETECTION

Samuel Olorunfemi Adams, Ednah Azikwe, Mohammed Anono Zubair
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Abstract

Due to the growing number of intrusions in local networks and the internet, it has become so universal that institution increasingly implements many structures that investigate information technology security violations. This study aimed to process, classify and predict the intrusion detection accuracy of some selected network attacks using the artificial neural network (ANN) technique. Five important attacks, namely; Buffer overflow, Denial of Service (DoS), User to Root Attack (U2R), Remote to Local Attack (R2L) and PROBE were chosen from the KDD CUPP’99 information and intrusion identification accuracy was investigated with artificial neural network (ANN) modeling technique. Findings from the classification show that out of the procedures utilized to establish the ANN model, 27262 of the 45528 buffer overflow are classified appropriately, 7903 of the 45528 DoS attacks are arranged appropriately, 1371 of the 45528 U2R are classified appropriately, 431 of the 45528 R2L are arranged appropriately and, 8304 of the 45528 PROBE are classified appropriately. Comprehensively, about 99.1% of the training proceedings are arranged properly, equivalent to 0.9% erroneous classification while the testing specimen assisted to confirm the model with 99.1% of the attacks were appropriately arranged by the ANN equation. This support that, comprehensively, the ANN equation is precise about the classification and prediction of the five attacks investigated in this study.
人工神经网络分析了KDD cup 99数据集的入侵检测
由于对本地网络和互联网的入侵越来越多,它已经变得如此普遍,以至于机构越来越多地实施了许多调查信息技术安全违规的结构。本研究旨在利用人工神经网络(ANN)技术对一些选定的网络攻击进行处理、分类和预测入侵检测的准确性。五项重要攻击,即;从KDD CUPP ' 99信息中选择了缓冲区溢出、拒绝服务攻击(DoS)、用户对根攻击(U2R)、远程对本地攻击(R2L)和探针攻击,并利用人工神经网络(ANN)建模技术对入侵识别的准确性进行了研究。分类结果表明,在用于建立ANN模型的程序中,45528缓冲区溢出有27262个被分类正确,45528 DoS攻击有7903个被分类正确,45528 U2R有1371个被分类正确,45528 R2L有431个被分类正确,45528 PROBE有8304个被分类正确。综合来看,约99.1%的训练过程安排得当,相当于0.9%的错误分类,而辅助确认模型的测试样本中,99.1%的攻击被ANN方程安排得当。这表明,总的来说,人工神经网络方程对于本研究中调查的五种攻击的分类和预测是精确的。
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