Title
Weighted Lstm For Intrusion Detection And Data Mining To Prevent Attacks
Abstract
The usage of cloud opportunities brings not only resources and storage availability, but puts also customer's privacy at stake. These services are carried out through web that generate log files. These files contain valuable information in tracking malicious behaviours. However, they are variant, voluminous and have high velocity. This paper structures input log files using data preparation treatment (DPT), anticipates missing features, and performs a weighted conversion to ease the discrimination of malicious activities. Regarding the robustness of deep learning in analysing high dimension databases, selecting dynamically features and detecting intrusions, our architecture avails its strength and proposes a weighted long short-term memory (WLSTM) deep learning algorithm. WLSTM mine network traffic predictors considering past events, and minimizes the vanishing gradient. Results prove its effectiveness; it achieves 98% of accuracy and reduces false alarm rates to 1.47%. For contextual malicious behaviours, the accuracy attained 97% and the loss was 22%.
Year
DOI
Venue
2020
10.1504/IJDMMM.2020.108728
INTERNATIONAL JOURNAL OF DATA MINING MODELLING AND MANAGEMENT
Keywords
DocType
Volume
cloud security breaches, intrusion-detection, weight of evidence, WoE, deep learning, long short-term memory, LSTM
Journal
12
Issue
ISSN
Citations 
3
1759-1163
0
PageRank 
References 
Authors
0.34
0
2
Name
Order
Citations
PageRank
Amar Meryem101.01
Bouabid El Ouahidi2146.08