Machine Learning Based Intrusion Detection System
Title | Machine Learning Based Intrusion Detection System |
Publication Type | Conference Paper |
Year of Publication | 2019 |
Authors | Halimaa A., Anish, Sundarakantham, K. |
Conference Name | 2019 3rd International Conference on Trends in Electronics and Informatics (ICOEI) |
Keywords | Bayes methods, Comparative Analysis, composability, computer network security, Conferences, data mining, detection rate, distrustful activity, false alarms, Informatics, Intrusion detection, Intrusion Detection Systems, learning (artificial intelligence), machine learning, machine learning based intrusion detection system, malicious activity, Market research, naive Bayes, network traffic data, NSL- KDD knowledge discovery dataset, pattern classification, Predictive Metrics, pubcrawl, Resiliency, security of data, statistical methodologies, support vector machine, Support Vector Machine Naive Bayes, Support vector machines, Training, well-organized classification methodology |
Abstract | In order to examine malicious activity that occurs in a network or a system, intrusion detection system is used. Intrusion Detection is software or a device that scans a system or a network for a distrustful activity. Due to the growing connectivity between computers, intrusion detection becomes vital to perform network security. Various machine learning techniques and statistical methodologies have been used to build different types of Intrusion Detection Systems to protect the networks. Performance of an Intrusion Detection is mainly depends on accuracy. Accuracy for Intrusion detection must be enhanced to reduce false alarms and to increase the detection rate. In order to improve the performance, different techniques have been used in recent works. Analyzing huge network traffic data is the main work of intrusion detection system. A well-organized classification methodology is required to overcome this issue. This issue is taken in proposed approach. Machine learning techniques like Support Vector Machine (SVM) and Naive Bayes are applied. These techniques are well-known to solve the classification problems. For evaluation of intrusion detection system, NSL- KDD knowledge discovery Dataset is taken. The outcomes show that SVM works better than Naive Bayes. To perform comparative analysis, effective classification methods like Support Vector Machine and Naive Bayes are taken, their accuracy and misclassification rate get calculated. |
DOI | 10.1109/ICOEI.2019.8862784 |
Citation Key | halimaa_a_machine_2019 |
- malicious activity
- well-organized classification methodology
- Training
- Support vector machines
- Support Vector Machine Naive Bayes
- support vector machine
- statistical methodologies
- security of data
- Resiliency
- pubcrawl
- Predictive Metrics
- pattern classification
- NSL- KDD knowledge discovery dataset
- network traffic data
- Naive Bayes
- Market research
- Bayes methods
- machine learning based intrusion detection system
- machine learning
- learning (artificial intelligence)
- Intrusion Detection Systems
- Intrusion Detection
- Informatics
- false alarms
- distrustful activity
- detection rate
- Data mining
- Conferences
- computer network security
- composability
- Comparative Analysis