Performance Comparison of Intrusion Detection System Between Deep Belief Network (DBN)Algorithm and State Preserving Extreme Learning Machine (SPELM) Algorithm
Title | Performance Comparison of Intrusion Detection System Between Deep Belief Network (DBN)Algorithm and State Preserving Extreme Learning Machine (SPELM) Algorithm |
Publication Type | Conference Paper |
Year of Publication | 2019 |
Authors | singh, Kunal, Mathai, K. James |
Conference Name | 2019 IEEE International Conference on Electrical, Computer and Communication Technologies (ICECCT) |
Keywords | anomaly detection, belief networks, Classification algorithms, composability, Computational modeling, cyber security, Data models, DBN algorithm, deep belief network, deep belief network algorithm, face recognition, feature extraction, feedforward neural nets, Intrusion detection, intrusion detection system, learning (artificial intelligence), machine learning algorithms, machine learning classifier, Metrics, network intrusion detection, NSL- KDD dataset, NSL-KDD dataset, object detection, pattern classification, pedestrian detection, pedestrians, pubcrawl, Resiliency, security of data, SPELM algorithm, state preserving extreme learning machine algorithm, State Preserving Extreme Learning Machine(SPELM), Testing, Training |
Abstract | This paper work is focused on Performance comparison of intrusion detection system between DBN Algorithm and SPELM Algorithm. Researchers have used this new algorithm SPELM to perform experiments in the area of face recognition, pedestrian detection, and for network intrusion detection in the area of cyber security. The scholar used the proposed State Preserving Extreme Learning Machine(SPELM) algorithm as machine learning classifier and compared it's performance with Deep Belief Network (DBN) algorithm using NSL KDD dataset. The NSL- KDD dataset has four lakhs of data record; out of which 40% of data were used for training purposes and 60% data used in testing purpose while calculating the performance of both the algorithms. The experiment as performed by the scholar compared the Accuracy, Precision, recall and Computational Time of existing DBN algorithm with proposed SPELM Algorithm. The findings have show better performance of SPELM; when compared its accuracy of 93.20% as against 52.8% of DBN algorithm;69.492 Precision of SPELM as against 66.836 DBN and 90.8 seconds of Computational time taken by SPELM as against 102 seconds DBN Algorithm. |
DOI | 10.1109/ICECCT.2019.8869492 |
Citation Key | singh_performance_2019 |
- pedestrian detection
- machine learning algorithms
- machine learning classifier
- Metrics
- network intrusion detection
- NSL- KDD dataset
- NSL-KDD dataset
- object detection
- pattern classification
- learning (artificial intelligence)
- pedestrians
- security of data
- SPELM algorithm
- state preserving extreme learning machine algorithm
- State Preserving Extreme Learning Machine(SPELM)
- testing
- Training
- DBN algorithm
- pubcrawl
- composability
- Resiliency
- Anomaly Detection
- Classification algorithms
- Computational modeling
- cyber security
- Data models
- belief networks
- Deep Belief Network
- deep belief network algorithm
- face recognition
- feature extraction
- feedforward neural nets
- Intrusion Detection
- intrusion detection system