Abstract

Online auction websites use a simple reputation system to help their users to evaluate the trustworthiness of sellers and buyers. However, to improve their reputation in the reputation system, fraudulent users can easily deceive the reputation system by creating fake transactions. This inflated-reputation fraud poses a major problem for online auction websites because it can lead legitimate users into scams. Numerous approaches have been proposed in the literature to address this problem, most of which involve using social network analysis (SNA) to derive critical features (e.g., k-core, center weight, and neighbor diversity) for distinguishing fraudsters from legitimate users. This paper discusses the limitations of these SNA features and proposes a class of SNA features referred to as neighbor-driven attributes (NDAs). The NDAs of users are calculated from the features of their neighbors. Because fraudsters require collusive neighbors to provide them with positive ratings in the reputation system, using NDAs can be helpful for detecting fraudsters. Although the idea of NDAs is not entirely new, experimental results on a real-world dataset showed that using NDAs improves classification accuracy compared with state-of-the-art methods that use the k-core, center weight, and neighbor diversity.

Highlights

  • Online shopping has recently become a major part of people’s lifestyles

  • To improve the neighbor diversity approach, this paper proposes the concept of neighbor-driven attributes (NDAs) for fraudster detection

  • To compare the performance of the existing approaches with that of our approach, we used the following three attribute combinations as inputs in a classification algorithm: Dr ; k-core and CW; k-core, CW, and Dr, where Dr, k-core, and CW refer to the neighbor diversity on the number of received ratings [7], k-core value, and center weight [4], respectively

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Summary

Introduction

It allows people to directly buy or sell goods or services over the Internet by using a web browser It offers various methods for buying and selling goods or services. To compensate for this, most online shopping websites employ a reputation system or a review system to collect users’ feedback regarding their shopping experience to assist potential buyers for selecting suitable merchandise and trustworthy sellers. Amazon.com and Rakuten (www.rakuten.co.jp) employ a unidirectional reputation system in which only buyers can rate both sellers and merchandise, but not vice versa. Some shopping websites, such as eBay, Ruten (www.ruten.com.tw), Taobao (www.taobao.com), and Tmall (www.tmall.com), use a bidirectional reputation system in which the buyer and the seller in a transaction can rate each other.

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