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: :  Online Transaction Fraud Detection
PaperId: :  24940
Published in:   International Journal Of Advance Research And Innovative Ideas In Education
Publisher:   IJARIIE
e-ISSN:   2395-4396
Volume/Issue:    Volume 10 Issue 5 2024
DUI:    16.0415/IJARIIE-24940
Licence: :   IJARIIE is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.

Author NameAuthor Institute
Arpitha CCMR University
Dr. N. PughazendiCMR University

Abstract

Computer Engineering
Online Transaction Fraud, Fraud Detection, E-commerce Security, Digital Financial Transactions, Machine Learning, Artificial Intelligence, Anomaly Detection, Cybersecurity, Data Analysis, Fraud Prevention, Interdisciplinary Collaboration, Regulatory Policies, Industry Standards
The rapid growth of e-commerce and digital financial transactions has heightened the need for effective systems to detect and prevent online transaction fraud. Developing advanced fraud detection mechanisms to ensure transaction security and consumer protection becomes essential as cyber criminals deploy increasingly sophisticated tactics to exploit system vulnerabilities. This research explores modern techniques for identifying and combating fraud in online transactions, focusing on machine learning, artificial intelligence, and anomaly detection methods. By leveraging extensive datasets and real-time data analysis, these techniques aim to improve the precision and efficiency of fraud detection systems. This study investigates the challenges of addressing online transaction fraud, particularly the dynamic nature of fraudulent techniques and the requirement for flexible detection systems. It highlights the necessity of integrating multiple technological solutions and developing adaptable models to stay ahead of evolving fraud tactics. The research offers insights into practical strategies for mitigating online fraud, improving transaction security, and building trust in digital financial services. By analyzing current methodologies and emerging trends, this work aims to advance efforts to protect financial transactions and maintain their integrity in the digital era. Additionally, the study underscores the critical need for ongoing advancements in fraud detection technologies and the value of interdisciplinary collaboration in combating fraud. It examines how partnerships among cybersecurity specialists, data analysts, and financial organizations can enhance fraud prevention efforts. The research also explores the influence of regulatory policies and industry standards on fraud mitigation practices, presenting a holistic view of strengthening the security framework for online transactions.

Citations

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

IJARIIE Arpitha C, and Dr. N. Pughazendi. "Online Transaction Fraud Detection" International Journal Of Advance Research And Innovative Ideas In Education Volume 10 Issue 5 2024 Page 618-621
MLA Arpitha C, and Dr. N. Pughazendi. "Online Transaction Fraud Detection." International Journal Of Advance Research And Innovative Ideas In Education 10.5(2024) : 618-621.
APA Arpitha C, & Dr. N. Pughazendi. (2024). Online Transaction Fraud Detection. International Journal Of Advance Research And Innovative Ideas In Education, 10(5), 618-621.
Chicago Arpitha C, and Dr. N. Pughazendi. "Online Transaction Fraud Detection." International Journal Of Advance Research And Innovative Ideas In Education 10, no. 5 (2024) : 618-621.
Oxford Arpitha C, and Dr. N. Pughazendi. 'Online Transaction Fraud Detection', International Journal Of Advance Research And Innovative Ideas In Education, vol. 10, no. 5, 2024, p. 618-621. Available from IJARIIE, https://ijariie.com/AdminUploadPdf/Online_Transaction_Fraud_Detection_ijariie24940.pdf (Accessed : 04 December 2024).
Harvard Arpitha C, and Dr. N. Pughazendi. (2024) 'Online Transaction Fraud Detection', International Journal Of Advance Research And Innovative Ideas In Education, 10(5), pp. 618-621IJARIIE [Online]. Available at: https://ijariie.com/AdminUploadPdf/Online_Transaction_Fraud_Detection_ijariie24940.pdf (Accessed : 04 December 2024)
IEEE Arpitha C, and Dr. N. Pughazendi, "Online Transaction Fraud Detection," International Journal Of Advance Research And Innovative Ideas In Education, vol. 10, no. 5, pp. 618-621, Sep-Oct 2024. [Online]. Available: https://ijariie.com/AdminUploadPdf/Online_Transaction_Fraud_Detection_ijariie24940.pdf [Accessed : 04 December 2024].
Turabian Arpitha C, and Dr. N. Pughazendi. "Online Transaction Fraud Detection." International Journal Of Advance Research And Innovative Ideas In Education [Online]. volume 10 number 5 (04 December 2024).
Vancouver Arpitha C, and Dr. N. Pughazendi. Online Transaction Fraud Detection. International Journal Of Advance Research And Innovative Ideas In Education [Internet]. 2024 [Cited : 04 December 2024]; 10(5) : 618-621. Available from: https://ijariie.com/AdminUploadPdf/Online_Transaction_Fraud_Detection_ijariie24940.pdf
BibTex EndNote RefMan RefWorks

Number Of Downloads


Last download on 12/4/2024 9:47:08 AM

Save in Google Drive

Similar-Paper

TitleArea of ResearchAuther NameAction
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
AI-RATIONMITRA: SMART PUBLIC DISTRIBUTION THROUGH AI AND IOTComputer Science and EngineeringDr. Madhu B K Download
Driver Drowsiness Detection System Using OpenCV And IOTComputer Science And EngineeringAkshay Amrutkar Download
Stock Sense: Deep Learning based stock-market prediction toolComputer Science and Engineering (Data Science)Meet Manoj Agarwal Download
Glaucoma prediction using machine learningComputer Science Engineering Prof. Vinutha N Download
AN AI POWERED MENTAL HEATH AND WELLNESS COMPAIONComputer Science EngineeringDr . Archana B Download
PREDICTING GENETIC VARIANTS PATHOGENECITYComputer EngineeringSyed Arbeena Kausar Download
ANDROID MALWARE DETECTION USING MACHINE LEARNING TECHNIQUESCOMPUTER SCIENCE AND ENGINEERINGS. Saiful Islam 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.