Abstract
Online auction in auctioneers or bidders sell or bid for products or services through the Internet. The person who bids the highest price, the seller sells the product to that person. An online auction is also known as a virtual auction. Fraud in online auctions is one of the most commonly reported online frauds. Shill bidding is the most prominent auction fraud in online auctioning. The best way to find shill bidding at that time is to reduce the chances of getting a thing by a shill bidder. We will remove the inaccurate data by data cleaning methods and securely check winner again by verifying generated tokens and reduce chances of fake winner. We will update the existing shill bidders finding method with a new mechanism. To deal with fraud bidding data, we will pick the most pertinent performance mechanism. Experimental result shows that the algorithm is able to provide the security and also detect the shill bidders in real-time auctioning.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Similar content being viewed by others
References
Guo, Z., Fu, Y., & Cao, C. (2017). Secure first-price sealed-bid auction scheme. Springer.
Majadi, N., Trevathan, J., & Bergmann, N. (2016). Analysis on bidding behaviors for detecting shill bidders in on-line auctions. IEEE.
Ganguly, S., & Sadaoui, S. (2017). Classification of imbalanced auction fraud data. Cham: Springer International Publishing AG.
Ganguly, S., & Sadaoui, S. (2018). Online detection of shill bidding fraud based on machine learning techniques. Cham: Springer International Publishing AG.
Trevathan, J. (2017). Getting into the mind of an “in-auction” fraud perpetrator. Elsevier.
Majadi, N., Trevathan, J., & Gray, H. (2017). Real time detection of shill bidding in online auctions: A literature review. Elsevier.
Majadi, N., Trevathan, J., & Bergann, N. (2016). uAuction: Analysis, design, and implementation of a secure online auction system. IEEE 2016.
Majadi, N., & Trevathan, J, (2018). A real-time detection algorithm for identifying shill bidders in multiple online auctions. In Hawaii International conference on System Sciences.
Hu, C., Li, R., Mei, B., Li, W., Alrawais, A., & Bie, R. (2018). Privacy-preserving combinatorial auction without an auctioneer. Springer.
Alzahrani, A., & Sadaoui, S. (2018). Clustering and labelling auction fraud data (CS 2018-08 https://doi.org/10.6084/m9.figshare.6993308).
Baader, G., & Krcma, H. (2018). Reducing false positives in fraud detection: Combining the red flag approach with process mining. Elsevier.
Mamun, K., & Sadaoui, S. (2018). Combating shill bidding in online auctions. IEEE.
Alzahrani, A., & Sadaoui, S. (2018). Scraping and Preprocessing Commercial Auction Data for Fraud Classification. Technical Report CS 2018-05.
Sadaoui (2018). Clustering and labelling auction fraud data. https://www.octoparse.com.
Lin, J.-L., & Khomnotai, L. (2017). Online Auction Fraud Detection in Privacy-Aware Reputation Systems. www.mdpi.com/journal/entropy.
Deorukhakar, S., Khabiya, N., Kulkarni, A., & Thorat, A. (2015). Online auction fraud detection. IJEERT.
Kaur, D., & Garg, D. (2015). Variable bid fee: An online auction shill bidding prevention methodology. In IEEE International Advance Computing Conference.
Internet Crime Complaint Center, 2014 internet crime report. https://www.fbi.gov/news/newsblog/2014-ic3-annual-report.
Majadi, N., Trevathan, J., & Bergann, N. (2018). Real-time collusive shill bidding detection in online auctions. Cham: Springer Nature Switzerland AG.
Sadaoui, S., & Wang, X. (2016). A dynamic stage-based fraud monitoring framework of multiple live auctions. Applied Intelligence, 46(1), 1–17.
Zhong, H., Li, S., Cheng, T.-F., & Chang, C.-C. (2016). An efficient electronic english auction system with a secure on-shelf mechanism and privacy preserving. Journal of Electrical and Computer Engineering.
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2020 Springer Nature Singapore Pte Ltd.
About this paper
Cite this paper
Bhatol, B., Patel, S., Suthar, K. (2020). An Enhance Mechanism to Recognize Shill Bidders in Real-Time Auctioning System. In: Sharma, H., Govindan, K., Poonia, R., Kumar, S., El-Medany, W. (eds) Advances in Computing and Intelligent Systems. Algorithms for Intelligent Systems. Springer, Singapore. https://doi.org/10.1007/978-981-15-0222-4_56
Download citation
DOI: https://doi.org/10.1007/978-981-15-0222-4_56
Published:
Publisher Name: Springer, Singapore
Print ISBN: 978-981-15-0221-7
Online ISBN: 978-981-15-0222-4
eBook Packages: Intelligent Technologies and RoboticsIntelligent Technologies and Robotics (R0)