For further details contact:
N.RAJASEKARAN B.E M.S 9841091117,9840103301.
IMPULSE TECHNOLOGIES,
Old No 251, New No 304,
2nd Floor,
Arcot road ,
Vadapalani ,
Chennai-26.
www.impulse.net.in
Email: ieeeprojects@yahoo.com/ imbpulse@gmail.com
Human-AI Co-Creation of Worked Examples for Programming Classes
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1. Impulse Technologies
Beacons U to World of technology
044-42133143, 98401 03301,9841091117 ieeeprojects@yahoo.com www.impulse.net.in
Preventing Private Information Inference Attacks on Social
Networks
Abstract
Online social networks, such as Face book, are increasingly utilized by many
people. These networks allow users to publish details about themselves and to
connect to their friends. Some of the information revealed inside these networks is
meant to be private. Yet it is possible that corporations could use learning
algorithms on released data to predict undisclosed private information. In this
paper, we explore how to launch inference attacks using released social networking
data to predict undisclosed private information about individuals, such as their
political affiliation or sexual orientation. We then devise three possible sanitization
techniques that could be used in various situations. Then, we explore the
effectiveness of these techniques by implementing them on a dataset obtained from
a specific geographical region of the Face book social networking application and
attempting to use methods of collective inference to discover sensitive attributes of
the data set. We show that we can decrease the effectiveness of both local and
relational classification algorithms by using the sanitization methods we described.
Your Own Ideas or Any project from any company can be Implemented
at Better price (All Projects can be done in Java or DotNet whichever the student wants)
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