Online reputation system is gaining popularity as it helps a user to be sure
about the quality of a product/service he wants to buy. Nonetheless online
reputation system is not immune from attack. Dealing with malicious ratings in
reputation systems has been recognized as an important but difficult task. This
problem is challenging when the number of true user's ratings is relatively
small and unfair ratings plays majority in rated values. In this paper, we have
proposed a new method to find malicious users in online reputation systems
using Quality Repository Approach (QRA). We mainly concentrated on anomaly
detection in both rating values and the malicious users. QRA is very efficient
to detect malicious user ratings and aggregate true ratings. The proposed
reputation system has been evaluated through simulations and it is concluded
that the QRA based system significantly reduces the impact of unfair ratings
and improve trust on reputation score with lower false positive as compared to
other method used for the purpose.Comment: 14 pages, 5 figures, 5 tables, submitted to ICACCI 2013, Mysore,
indi