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NIDS-Network Intrusion Detection System Based on Deep and Machine Learning Frameworks with CICIDS2018 using Cloud Computing

机译:利用云计算,基于深层和机器学习框架的NIDS网络入侵检测系统

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Currently Machine-learning (ML) methods are widely active in this era of information security. Owing to unpredictable actions and unknown vulnerabilities, conventional security strategies based on rules remain vulnerable to sophisticated attacks. ML techniques enable us to develop IDS-Intrusion Detection Systems focused upon finding of anomalies rather than detection of misuse. In addition, threshold problems in detecting anomalies can also be overcome by machine-learning. Like the malicious code datasets, there are relatively few data sets for network intrusion detection. KDDCUP-99 remains the dataset most utilized for IDS assessment. Numerous experiments on ML-Machine Learning based IDS utilizing KDD or enhanced KDD models. Dataset CSE-CICIDS-2018, is used in this paper which contains the most cutting-edge basic system threats. We employ an Intrusion Detection System with Machine Learning Based (Random Forest) for CSE-CIC-IDS-2018 provides an exceptional score with Accuracy score 99%.
机译:目前机器学习(ML)方法在信息安全的时代广泛活跃。由于不可预测的行动和未知的漏洞,基于规则的传统安全策略仍然容易受到复杂攻击的影响。 ML技术使我们能够开发IDS入侵检测系统,专注于发现异常而不是检测误用。此外,还可以通过机器学习来克服检测异常的阈值问题。与恶意代码数据集一样,有用于网络入侵检测的数据集相对较少。 kddcup-99仍然是用于IDS评估的数据集。利用KDD或增强KDD模型的ML机器学习IDS的许多实验。 DataSet CSE-Cicids-2018,用于本文使用,其中包含最前沿的基本系统威胁。我们采用了一种带有基于机器学习(随机林)的入侵检测系统,用于CSE-CIC-IDS-2018提供了卓越的分数,精度得分99%。

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