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Vishal PatilParesh RawatPratik NikamSatish Patil
By:
Under The Guidance OfProf.Rucha Samant
Agenda
PROBLEM DEFINITION INTRODUCTIONISSUESSCOPEANALYSISDESIGNIMPLEMENTATIONS
Problem Definition
To detect whether data has been leaked by agents.
To prevent data leakage .
Introduction
In the course of doing business, sometimes sensitive data must be handed over to supposedly trusted third parties.
Our goal is to detect when the distributor's sensitive
data has been leaked by agents, and if possible to identify the agent that leaked the data.
Existing System
Proposed System
In this system the leakage of data is detected by generating fake objects .
Data leakage prevention and detection of guilty agents is handled by e-mail filtering.
Types of employees that put your company at risk
The security illiterate
The gadget nerds
The unlawful residents
The malicious/disgruntled employees
Problem Setup and Notation Distributor (D) is a system which will distribute data to
agents Valuable Data (T) is the set of sensitive data which the
system is going to send to the agents Agent (U) is the set of agents to whom the system is going
to send sensitive data. Request from client will be either sample request or
explicit request.
Analysis
Explicit Data Requests
1. Distributor having data T={t1,t2}2. Agent request (R ) R1= {t1, t2} R2= {t1} R1 gets both data t1 and t2 R2 gets data t1 Therefore value of sum objective. R1+ R2
2/2 + 1/2 = 1.53. Select agent using Randomize function
algorithm. SelectAgent {R1,…….,R2}4. E-optimal solution O(n+n2B)= O(n2B) Where n= number of agents, B= number of Fake objects.
In this algorithm, the agent receives the entire data object that satisfies
the condition of the agents’ data request. The following algorithm shows
the working of Explicit Data Request:
Sample Data Requests
With sample data requests, agents are not interested in particular objects. In this algorithm, the agent receives only the subset of data object that can be given. The working of Sample Data Request algorithm is same as the working of Explicit Data Request.
ARCHITECTURE DIAGRAM:
Data Distributor
Agents
Agents Requesting Secured data from the Data Distributor
Requesting sensitive data
ARCHITECTURE DIAGRAM:
Data distributor sending the secured data to the agents
Sensitive data is sent
Data Distributor
Agents
Internet
Agent tries to leak the sensitive data
Internet
Agent tries to leak the sensitive data
The system has the following
• Data Allocation -- approach same as watermarking -- less sensitive -- add fake object in some cases
• Fake Object -- Are real looking object -- Should not affect data -- Limit on fake object insertion(e-mail inbox) -- CREATEFAKEOBJECT (Ri, Fi, CONDi)
• Optimization
-- One constraint and one objective
-- Maximize the probability difference•Data Distributor
•e-mail Filtering
Algorithm:
1.Identify the data.2.Remove spamming stopping words.3.Remove or change the synonyms.4.Calculate the priority of the word depending upon the sensitivity of the data.5.Compare data with predefine company data sets.6.Filter the data if it has company’s important data sets.
Attached data is not sensitive data
E-mail sent successfully
Attached data is a sensitive data
E-mail not sent as the data it contains is sensitive
Agent
O/S : Windows XP.Language : Asp.Net, c#.Data Base : Sql Server 2005
System : Pentium IV 2.4 GHz Hard Disk : 40 GBMonitor : 15 VGA colourMouse : Logitech.Keyboard : 110 keys enhanced.RAM : 256 MB
In the real scenario there is no need to hand over the sensitive data to the agents who will unknowingly or maliciously leak it.
However, in many cases, we must indeed work with agents that may not be 100 percent trusted, and we may not be certain if a leaked object came from an agent or from some other source.
In spite of these difficulties, it is possible to assess the likelihood that an agent is responsible for a leak, based on the overlap of his data with the leaked data .
The algorithms we have presented implement a variety of data distribution strategies that can improve the distributor’s chances of identifying a leaker.
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Panagiotis Papadimitriou and Hector Garcia-Molina, “Data Leakage Detection,” IEEE Transactions on Knowledge and Data Engineering, Vol 23, No.1 January 2011.
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