A Run-Time Algorithm for Detecting Shill Bidding in Online Auctions

Abstract: Online auctions are a popular and convenient way to engage in ecommerce. However, the amount of auction fraud has increased with the rapid surge of users participating in online auctions. Shill bidding is the most prominent type of auction fraud where a seller submits bids to inflate the price of the item without the intention of winning. Mechanisms have been proposed to detect shill bidding once an auction has finished. However, if the shill bidder is not detected during the auction, an innocent bidder can potentially be cheated by the end of the auction. Therefore, it is essential to detect and verify shill bidding in a running auction and take necessary intervention steps accordingly. This paper proposes a run-time statistical algorithm, referred to as the Live Shill Score, for detecting shill bidding in online auctions and takes appropriate actions towards the suspected shill bidders (e.g., issue a warning message, suspend the auction, etc.). The Live Shill Score algorithm also uses a Post-Filtering Process to avoid misclassification of innocent bidders. Experimental results using both simulated and commercial auction data show that our proposed algorithm can potentially detect shill bidding attempts before an auction ends.

Saved in:
Bibliographic Details
Main Authors: Majadi,Nazia, Trevathan,Jarrod, Gray,Heather
Format: Digital revista
Language:English
Published: Universidad de Talca 2018
Online Access:http://www.scielo.cl/scielo.php?script=sci_arttext&pid=S0718-18762018000300103
Tags: Add Tag
No Tags, Be the first to tag this record!
id oai:scielo:S0718-18762018000300103
record_format ojs
spelling oai:scielo:S0718-187620180003001032018-12-10A Run-Time Algorithm for Detecting Shill Bidding in Online AuctionsMajadi,NaziaTrevathan,JarrodGray,Heather Auction fraud Bidding behaviour Live shill score Online auction Post-filtering process Shill bidding. Abstract: Online auctions are a popular and convenient way to engage in ecommerce. However, the amount of auction fraud has increased with the rapid surge of users participating in online auctions. Shill bidding is the most prominent type of auction fraud where a seller submits bids to inflate the price of the item without the intention of winning. Mechanisms have been proposed to detect shill bidding once an auction has finished. However, if the shill bidder is not detected during the auction, an innocent bidder can potentially be cheated by the end of the auction. Therefore, it is essential to detect and verify shill bidding in a running auction and take necessary intervention steps accordingly. This paper proposes a run-time statistical algorithm, referred to as the Live Shill Score, for detecting shill bidding in online auctions and takes appropriate actions towards the suspected shill bidders (e.g., issue a warning message, suspend the auction, etc.). The Live Shill Score algorithm also uses a Post-Filtering Process to avoid misclassification of innocent bidders. Experimental results using both simulated and commercial auction data show that our proposed algorithm can potentially detect shill bidding attempts before an auction ends.info:eu-repo/semantics/openAccessUniversidad de TalcaJournal of theoretical and applied electronic commerce research v.13 n.3 20182018-01-01text/htmlhttp://www.scielo.cl/scielo.php?script=sci_arttext&pid=S0718-18762018000300103en10.4067/S0718-18762018000300103
institution SCIELO
collection OJS
country Chile
countrycode CL
component Revista
access En linea
databasecode rev-scielo-cl
tag revista
region America del Sur
libraryname SciELO
language English
format Digital
author Majadi,Nazia
Trevathan,Jarrod
Gray,Heather
spellingShingle Majadi,Nazia
Trevathan,Jarrod
Gray,Heather
A Run-Time Algorithm for Detecting Shill Bidding in Online Auctions
author_facet Majadi,Nazia
Trevathan,Jarrod
Gray,Heather
author_sort Majadi,Nazia
title A Run-Time Algorithm for Detecting Shill Bidding in Online Auctions
title_short A Run-Time Algorithm for Detecting Shill Bidding in Online Auctions
title_full A Run-Time Algorithm for Detecting Shill Bidding in Online Auctions
title_fullStr A Run-Time Algorithm for Detecting Shill Bidding in Online Auctions
title_full_unstemmed A Run-Time Algorithm for Detecting Shill Bidding in Online Auctions
title_sort run-time algorithm for detecting shill bidding in online auctions
description Abstract: Online auctions are a popular and convenient way to engage in ecommerce. However, the amount of auction fraud has increased with the rapid surge of users participating in online auctions. Shill bidding is the most prominent type of auction fraud where a seller submits bids to inflate the price of the item without the intention of winning. Mechanisms have been proposed to detect shill bidding once an auction has finished. However, if the shill bidder is not detected during the auction, an innocent bidder can potentially be cheated by the end of the auction. Therefore, it is essential to detect and verify shill bidding in a running auction and take necessary intervention steps accordingly. This paper proposes a run-time statistical algorithm, referred to as the Live Shill Score, for detecting shill bidding in online auctions and takes appropriate actions towards the suspected shill bidders (e.g., issue a warning message, suspend the auction, etc.). The Live Shill Score algorithm also uses a Post-Filtering Process to avoid misclassification of innocent bidders. Experimental results using both simulated and commercial auction data show that our proposed algorithm can potentially detect shill bidding attempts before an auction ends.
publisher Universidad de Talca
publishDate 2018
url http://www.scielo.cl/scielo.php?script=sci_arttext&pid=S0718-18762018000300103
work_keys_str_mv AT majadinazia aruntimealgorithmfordetectingshillbiddinginonlineauctions
AT trevathanjarrod aruntimealgorithmfordetectingshillbiddinginonlineauctions
AT grayheather aruntimealgorithmfordetectingshillbiddinginonlineauctions
AT majadinazia runtimealgorithmfordetectingshillbiddinginonlineauctions
AT trevathanjarrod runtimealgorithmfordetectingshillbiddinginonlineauctions
AT grayheather runtimealgorithmfordetectingshillbiddinginonlineauctions
_version_ 1755994689891205120