Logo
  • Home
  • About Us
    • Aim and Scope
    • Research Area
    • Impact Factor
    • Indexing
  • For Authors
    • Authors Guidelines
    • How to publish paper?
    • Download Paper format
    • Submit Manuscript
    • Processing Charges
    • Download Copyrights Form
    • Submit Payment-Copyrights
  • Archives
    • Current Issues
    • Past Issues
    • Conference Issues
    • Special Issues
    • Advance Search
  • IJARIIE Board
    • Join as IJARIIE Board
    • Advisory Board
    • Editorial Board
    • Sr. Reviewer Board
    • Jr. Reviewer Board
  • Proposal
    • Conferece Proposal
    • Special Proposal
    • Faqs
  • Contact Us
  • Payment Detail

Call for Papers:Vol.11 Issue.3

Submission
Last date
28-Jun-2025
Acceptance Status In One Day
Paper Publish In Two Days
Submit ManuScript

News & Updates

Submit Article

Dear Authors, Article publish in our journal for Volume-11,Issue-3. For article submission on below link: Submit Manuscript


Join As Board

Dear Reviewer, You can join our Reviewer team without given any charges in our journal. Submit Details on below link: Join As Board


Paper Publication Charges

IJARIIE APP
Download Android App

For Authors

  • How to Publish Paper
  • Submit Manuscript
  • Processing Charges
  • Submit Payment

Archives

  • Current Issue
  • Past Issue

IJARIIE Board

  • Member Of Board
  • Join As Board

Downloads

  • Authors Guidelines
  • Manuscript Template
  • Copyrights Form

Android App

Download IJARIIE APP
  • Authors
  • Abstract
  • Citations
  • Downloads
  • Similar-Paper

Authors

Title: :  Identifying and Categorizing Twitter Bot using Machine Learning.
PaperId: :  23914
Published in:   International Journal Of Advance Research And Innovative Ideas In Education
Publisher:   IJARIIE
e-ISSN:   2395-4396
Volume/Issue:    Volume 10 Issue 3 2024
DUI:    16.0415/IJARIIE-23914
Licence: :   IJARIIE is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.

Author NameAuthor Institute
Sushama.S. MuleMIT College of Railway Engineering & Research
Jayant Sanjay ModakMIT College of Railway Engineering & Research
Aditya SatheMIT College of Railway Engineering & Research
Kapil YadavMIT College of Railway Engineering & Research
Anup PathakMIT College of Railway Engineering & Research

Abstract

Computer Science Engineering
Twitter Bot Detection, AI, Machine Learning, Python, Data Preprocessing, Data Collection, Logistic Regression, Decision Trees, Random Forest, Naive Bayes, K-Nearest Neighbors (KNN)
Social media platforms like Twitter have become integral parts of modern communication, offering vast networks for sharing information, engaging with communities, and disseminating news. However, alongside genuine users, these platforms also host automated accounts known as bots, which can manipulate discourse, spread misinformation, and influence public opinion. This research paper explores the application of machine learning techniques to identify and categorize Twitter bots, aiming to enhance the platform's integrity and mitigate the risks associated with bot-driven activities. By leveraging features such as user behavior, posting patterns, and network interactions, machine learning models can effectively distinguish between bots and human users, facilitating targeted interventions and policy measures to combat malicious activities on social media. This design aims to address these issues by developing a sophisticated tool for the identification and categorization of Twitter bots through the operation of advanced Machine Learning ways. The categorization process involves classifying linked bots into distinct orders grounded on their intended purposes and behavior’s. These orders may include political manipulation, spam propagation, misinformation dispersion, or other vicious conditioning. Unsupervised literacy algorithms are employed to uncover retired patterns and connections within the data, easing the clustering of bots into meaningful orders. This categorization not only enhances the delicacy of bot discovery but also provides precious perceptivity into the different strategies employed by bot networks. The significance of this design lies in its eventuality to contribute to the ongoing sweats to save the integrity of online communication channels. By planting an intelligent tool able of relating and grading Twitter bots, druggies and platform directors can take timely and informed conduct to check the influence of automated realities. As the digital geography continues to evolve, this design stands as a testament to the vital part that Machine Learning plays in securing the authenticity and trustability of social media platforms. By addressing the challenges posed by Twitter bots, this design underscores the vital part of ML in conserving the authenticity and trustability of social media platforms in an ever- evolving digital geography.

Citations

Copy and paste a formatted citation or use one of the links to import into a bibliography manager and reference.

IJARIIE Sushama.S. Mule, Jayant Sanjay Modak, Aditya Sathe, Kapil Yadav, and Anup Pathak. "Identifying and Categorizing Twitter Bot using Machine Learning." International Journal Of Advance Research And Innovative Ideas In Education Volume 10 Issue 3 2024 Page 2064-2075
MLA Sushama.S. Mule, Jayant Sanjay Modak, Aditya Sathe, Kapil Yadav, and Anup Pathak. "Identifying and Categorizing Twitter Bot using Machine Learning.." International Journal Of Advance Research And Innovative Ideas In Education 10.3(2024) : 2064-2075.
APA Sushama.S. Mule, Jayant Sanjay Modak, Aditya Sathe, Kapil Yadav, & Anup Pathak. (2024). Identifying and Categorizing Twitter Bot using Machine Learning.. International Journal Of Advance Research And Innovative Ideas In Education, 10(3), 2064-2075.
Chicago Sushama.S. Mule, Jayant Sanjay Modak, Aditya Sathe, Kapil Yadav, and Anup Pathak. "Identifying and Categorizing Twitter Bot using Machine Learning.." International Journal Of Advance Research And Innovative Ideas In Education 10, no. 3 (2024) : 2064-2075.
Oxford Sushama.S. Mule, Jayant Sanjay Modak, Aditya Sathe, Kapil Yadav, and Anup Pathak. 'Identifying and Categorizing Twitter Bot using Machine Learning.', International Journal Of Advance Research And Innovative Ideas In Education, vol. 10, no. 3, 2024, p. 2064-2075. Available from IJARIIE, https://ijariie.com/AdminUploadPdf/Identifying_and_Categorizing_Twitter_Bot_using_Machine_Learning__ijariie23914.pdf (Accessed : ).
Harvard Sushama.S. Mule, Jayant Sanjay Modak, Aditya Sathe, Kapil Yadav, and Anup Pathak. (2024) 'Identifying and Categorizing Twitter Bot using Machine Learning.', International Journal Of Advance Research And Innovative Ideas In Education, 10(3), pp. 2064-2075IJARIIE [Online]. Available at: https://ijariie.com/AdminUploadPdf/Identifying_and_Categorizing_Twitter_Bot_using_Machine_Learning__ijariie23914.pdf (Accessed : )
IEEE Sushama.S. Mule, Jayant Sanjay Modak, Aditya Sathe, Kapil Yadav, and Anup Pathak, "Identifying and Categorizing Twitter Bot using Machine Learning.," International Journal Of Advance Research And Innovative Ideas In Education, vol. 10, no. 3, pp. 2064-2075, May-Jun 2024. [Online]. Available: https://ijariie.com/AdminUploadPdf/Identifying_and_Categorizing_Twitter_Bot_using_Machine_Learning__ijariie23914.pdf [Accessed : ].
Turabian Sushama.S. Mule, Jayant Sanjay Modak, Aditya Sathe, Kapil Yadav, and Anup Pathak. "Identifying and Categorizing Twitter Bot using Machine Learning.." International Journal Of Advance Research And Innovative Ideas In Education [Online]. volume 10 number 3 ().
Vancouver Sushama.S. Mule, Jayant Sanjay Modak, Aditya Sathe, Kapil Yadav, and Anup Pathak. Identifying and Categorizing Twitter Bot using Machine Learning.. International Journal Of Advance Research And Innovative Ideas In Education [Internet]. 2024 [Cited : ]; 10(3) : 2064-2075. Available from: https://ijariie.com/AdminUploadPdf/Identifying_and_Categorizing_Twitter_Bot_using_Machine_Learning__ijariie23914.pdf
BibTex EndNote RefMan RefWorks

Number Of Downloads



Save in Google Drive

Similar-Paper

TitleArea of ResearchAuther NameAction
Leveraging AWS for Developing and Hosting a Dynamic Food Ordering Web ApplicationComputer EngineeringAfshin Khanam Download
Edge-to-Cloud Synergy: An Autoencoder-GAN Framework for Anomaly Detection in Healthcare Records, Financial Statements, and Secure Cloud StorageInformation TechnologyKarthik Kushala Download
E-Commerce Fraud Detection Based on Machine Learning TechniquesComputer Science EngneeringVikram Ankush Ade Download
Detection of Phishing Website Using Gradient Boosting AlgorithmComputer Science and EngineeringYAWALKAR PRASAD PRAMOD Download
Property Dealing WebComputer Science EngineeringYash Chaudhari Download
Reinforcement Learning for the Evolution of Antimicrobial Nano formulationsmachine learningMadhusudan Download
SecuraVault: A secured blockchain based cloud storage systemComputer Engineering Anshika Jaiswal Download
Autoimmune Disease Detection in women Using Machine Learning Approachcomputer science EngineeringJ. L. V. S. Download
Medicine Overdose Detection System Using Machine LearningComputer Science EngineeringDr.Somashekhar B M Download
Home Price Prediction Using Machine LearningComputer Science & Engineering G Tushar Download
Heat diseases prediction using machine learningComputer EngineeringProf. Meghashree M B Download
GRIDSHIELD AIComputer EngineeringDr. Archana B Download
Diabetic Retinopathy Detection with AI InsightsComputer EngineeringJay Mahesh Gurav Download
Personalized Fitness Segmentation with Actionable InsightsMachine LearningAnju Tiwari Download
Sentiment-Based Machine Learning Approach for Mapping Citizen ProblemsComputer science and EngineeringDr. Madhu B K Download
12
For Authors
  • Submit Paper
  • Processing Charges
  • Submit Payment
Archive
  • Current Issue
  • Past Issue
IJARIIE Board
  • Member Of Board
  • Join As Board
Privacy and Policy
Follow us

Contact Info
  • +91-8401209201 (India)
  • +86-15636082010 (China)
  • ijariiejournal@gmail.com
  • M-20/234 Ami Appt,
    Nr.Naranpura Tele-Exch,
    Naranpura,
    Ahemdabad-380063
    Gujarat,India.
Copyright © 2025. IJARIIE. All Rights Reserved.