An Individulized Prison Network Public Opinion Algorithm Based on Belief Network

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Abstract:

With the development of Internet and the sharp increase of the number of netizens, Network is becoming an important public platform for the public to express the opinion, Network public opinion is becoming the improtant base of decision making to the government and companies.Managing the public opinion information and timely discovering hot spots is essential to correctly guiding the public opinion trends, so the Network Public Opinion has become a hot point in this years.Because of the different demand, it is impossible for all the users to acquire the satisfied result.This paper describes an individulized prison Network Public Opinion algorithm based on information network to solve this problem expecially for the judicial authority.

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Periodical:

Advanced Materials Research (Volumes 718-720)

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1956-1960

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Online since:

July 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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