EFFECTIVE PREDICTION OF DDOS ATTACK USING DEEP LEARNING CLASSIFIERS
Author(s):
Anisha L, J. Caroline Misbha
Keywords:
DDOS, LSTM, MLP, DL, Confusion matrix.
Abstract
Distributed Denial of Service (DDoS) assaults are a frequent moniker for distributed network attacks. These attacks take use of certain restrictions that apply to each asset of the arrangement, such as the design of the website for the allowed organisation. In this research, a deep learning method for anticipating DDoS attacks is proposed. The techniques of deep learning were created for this project's classification of DDOS assaults. The deep learning methodology includes the classification algorithms Multilayer Perceptron (MLP) and Long Short-Term Memory Networks (LSTM). The datasets are pre-processed using Standard Scaler. To enable the identification and categorization of DDOS assaults, deep learning methods are deployed. An artificial neural network feed-forward model called MLP converts input sets into output sets. In order to diagnose defects in that area, the LSTM classifier is built to categorize errors according to their nature. This suggested project generated a confusion matrix in order to evaluate the model's performance. Python software is used to implement this simulation.
Article Details
Unique Paper ID: 161639

Publication Volume & Issue: Volume 10, Issue 5

Page(s): 246 - 250
Article Preview & Download


Share This Article

Conference Alert

NCSST-2023

AICTE Sponsored National Conference on Smart Systems and Technologies

Last Date: 25th November 2023

SWEC- Management

LATEST INNOVATION’S AND FUTURE TRENDS IN MANAGEMENT

Last Date: 7th November 2023

Go To Issue



Call For Paper

Volume 10 Issue 1

Last Date for paper submitting for March Issue is 25 June 2023

About Us

IJIRT.org enables door in research by providing high quality research articles in open access market.

Send us any query related to your research on editor@ijirt.org

Social Media

Google Verified Reviews