Hybrid Top Features Extraction Model for Detecting X Rumor Events Using an Ensemble Method

Project Code :TCMAPY1578

Objective

The hybrid top most features extraction model is intended for detecting rumor events on social media through ensembling Random Forest, Long Short-Term Memory (LSTM), and XGBoost machine learning models. Enhancing the accuracy of rumor detection results is achieved through the combined feature selection, sequential text modeling, and ensemble learning benefits. A dataset containing social media posts with text, user handles, and topics is analyzed to be able to filter and classify rumors so that the research achieves a sound solution for real-time detection and harm-reduction strategies from rumor effects in digital inference.

Abstract

Network traffic classification is an important function in networking systems, but the lack of labeled data for various network conditions inhibits most of the conventional classification models. The work proposes data-augmentation enhancement for a more efficient network traffic classification. The method generates synthetic data to increase the data set, thereby promoting classifier robustness and accuracy. In particular, we analyze the working of decision trees and stacking classifiers in the context of the enhanced classification. The decision tree classifier is picked mainly due to its interpretability and faster operational training, while the stacking classifier combines several different models to benefit from the complementary strengths of the individual models. This study uses two real-world datasets for evaluation: "TimeBasedFeatures-Dataset-15s-NO-VPN" and "TimeBasedFeatures-Dataset-15s-VPN," which embodies the presence or absence of VPN usage on network traffic. From the same experiment it has been ascertained that the proposed data augmentation enhances the performance of both the classifiers of traffic pattern differentiation particularly when operating under diverse network environments. It is also evident that the proposed method can be used as potential approach to improve traffic classification with high accuracy levels and applicability to real-world scenarios. 

  Keywords: Network security, traffic analysis, and performance evaluation with regards to Network Traffic Classification, Data Augmentation, Decision Tree, Stacking Classifier, VPN Traffic, Time-based Features, Machine Learning.

NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

SOFTWARE REQUIREMENS

Operating System                               :  Windows 7/8/10

Server side Script                                :  HTML, CSS, Bootstrap & JS

Programming Language                     :  Python

Libraries                                              :Flask, Torch, Tensorflow, Pandas, Mysql.connector

IDE/Workbench                                  :  VSCode

Server Deployment                             :  Xampp Server

Database                                             :  MySQL    

 

HARDWARE REQUIREMENTS

Processor                                   - I3/Intel Processor

RAM                                       - 8GB (min)

Hard Disk                                - 128 GB

Key Board                               - Standard Windows Keyboard

Mouse                                      - Two or Three Button Mouse

Monitor                                    - Any

Demo Video

mail-banner
call-banner
contact-banner
Request Video