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Flexibility enhanced security system for OSN user wall

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Abstract:
Online Social Networks(OSN) is a feature in many social network services which allow users to create ,post ,comment to and read from their own interest. Before user have to take decision to accept or reject message through some filtering rules. Wall owner to specify BL rules regulating who has to be banned from their walls and for how long. Based on database word probability assign threshold for particular user to be blocked or send just notification message. White List is a list of those that are being provided a privilege and access to send a message .But BL easily fake any sender address and WL big risk of losing legitimate. In this paper we propose Bypassing filtering system to resolve the disadvantages of both BL and WL.
Keywords:OSN,FW,BL,WL, Bypass filtering system.

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