Redirigiendo al acceso original de articulo en 24 segundos...
Inicio  /  Information  /  Vol: 11 Par: 6 (2020)  /  Artículo
ARTÍCULO
TITULO

Ensemble-Based Online Machine Learning Algorithms for Network Intrusion Detection Systems Using Streaming Data

Nathan Martindale    
Muhammad Ismail and Douglas A. Talbert    

Resumen

As new cyberattacks are launched against systems and networks on a daily basis, the ability for network intrusion detection systems to operate efficiently in the big data era has become critically important, particularly as more low-power Internet-of-Things (IoT) devices enter the market. This has motivated research in applying machine learning algorithms that can operate on streams of data, trained online or ?live? on only a small amount of data kept in memory at a time, as opposed to the more classical approaches that are trained solely offline on all of the data at once. In this context, one important concept from machine learning for improving detection performance is the idea of ?ensembles?, where a collection of machine learning algorithms are combined to compensate for their individual limitations and produce an overall superior algorithm. Unfortunately, existing research lacks proper performance comparison between homogeneous and heterogeneous online ensembles. Hence, this paper investigates several homogeneous and heterogeneous ensembles, proposes three novel online heterogeneous ensembles for intrusion detection, and compares their performance accuracy, run-time complexity, and response to concept drifts. Out of the proposed novel online ensembles, the heterogeneous ensemble consisting of an adaptive random forest of Hoeffding Trees combined with a Hoeffding Adaptive Tree performed the best, by dealing with concept drift in the most effective way. While this scheme is less accurate than a larger size adaptive random forest, it offered a marginally better run-time, which is beneficial for online training.

 Artículos similares

       
 
Abrar A. Almuhanna, Wael M. S. Yafooz and Abdullah Alsaeedi    
In this era of digital transformation, when the amount of scholarly literature is rapidly growing, hundreds of papers are published online daily with regard to different fields, especially in relation to academic subjects. Therefore, it difficult to find... ver más
Revista: Applied Sciences

 
Yajing Zhang, Kai Wang and Jinghui Zhang    
Considering the contradiction between limited node resources and high detection costs in mobile multimedia networks, an adaptive and lightweight abnormal node detection algorithm based on artificial immunity and game theory is proposed in order to balanc... ver más
Revista: Algorithms

 
Mengjie Liao, Lin Qi and Jian Zhang    
The negative impact of brand negative online word-of-mouth (OWOM) on social images in social media is far greater than the promotion of positive OWOM. Thus, how to optimize brand image by improving the positive OWOM effect and slowing the negative OWOM c... ver más
Revista: Information

 
Asadullah Shaikh     Pág. pp. 4 - 6
 The Special Issue of the International Journal of Interactive Mobile Technologies (iJIM) is publishing very selective papers presented at the 6th edition of International Conference on Communication, Management, and Information Technology- ICCMIT 2... ver más

 
Nada M. Elshennawy     Pág. pp. 22 - 34
Growing of time-sensitive applications such as streaming multimedia, voice over IP and online gaming required strongly support from mobile communication technology. So, the persistent need for wireless broadband technologies such as LTE-A is essential. L... ver más