Title | A Hybrid Machine Learning and Data Mining Based Approach to Network Intrusion Detection |
Publication Type | Conference Paper |
Year of Publication | 2021 |
Authors | Singhal, Abhinav, Maan, Akash, Chaudhary, Daksh, Vishwakarma, Dinesh |
Conference Name | 2021 International Conference on Artificial Intelligence and Smart Systems (ICAIS) |
Date Published | mar |
Keywords | composability, Decision Tree, Decision trees, Inference Detection, intrusion, k-nearest neighbors, machine learning, naive Bayes, Network interfaces, network intrusion detection, Predictive Metrics, pubcrawl, Resiliency, support vector machine, Support vector machines, Testing, Training |
Abstract | This paper outlines an approach to build an Intrusion detection system for a network interface device. This research work has developed a hybrid intrusion detection system which involves various machine learning techniques along with inference detection for a comparative analysis. It is explained in 2 phases: Training (Model Training and Inference Network Building) and Detection phase (Working phase). This aims to solve all the current real-life problem that exists in machine learning algorithms as machine learning techniques are stiff they have their respective classification region outside which they cease to work properly. This paper aims to provide the best working machine learning technique out of the many used. The machine learning techniques used in comparative analysis are Decision Tree, Naive Bayes, K-Nearest Neighbors (KNN) and Support Vector Machines (SVM) along with NSLKDD dataset for testing and training of our Network Intrusion Detection Model. The accuracy recorded for Decision Tree, Naive Bayes, K-Nearest Neighbors (KNN) and Support Vector Machines(SVM) respectively when tested independently are 98.088%, 82.971%, 95.75%, 81.971% and when tested with inference detection model are 98.554%, 66.687%, 97.605%, 93.914%. Therefore, it can be concluded that our inference detection model helps in improving certain factors which are not detected using conventional machine learning techniques. |
DOI | 10.1109/ICAIS50930.2021.9395918 |
Citation Key | singhal_hybrid_2021 |