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Classification based on Predictive Association Rule for Discrimination Prevention
Author(s) -
Ankita K.Shinde,
Pramod B. Mali
Publication year - 2014
Publication title -
international journal of computer applications
Language(s) - English
Resource type - Journals
ISSN - 0975-8887
DOI - 10.5120/15094-3339
Subject(s) - computer science , association rule learning , association (psychology) , artificial intelligence , data mining , psychology , psychotherapist
In data mining, discrimination is the subject which has been extensively studied in social and economic science. However, there are negative perceptions about data mining. Discrimination comes under two categories one is direct and second is indirect. Decisions based on sensitive attributes are termed as direct discrimination and the decisions which are based on non-sensitive attributes are termed as indirect discrimination which is strongly correlated with biased sensitive once. There are many new techniques proposed for solving discrimination prevention problems by applying direct or indirect discrimination prevention individually or both at the same time. New metrics to evaluate the utility were proposed and are compared with approaches. The proposed work discusses how privacy preservation and prevention between discrimination is implementing with the help of post processing approach. The Classification based on predictive association rules (CPAR) is a kind of association classification methods which combines the advantages of both associative classification and traditional rule-based classification which is used to prevent discrimination prevention in post processing by improving accuracy.

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