P2DM-RGCD: PPDM Centric Classification Rule Generation Scheme

α
S Kumara Swamy
S Kumara Swamy
σ
Manjula S H
Manjula S H
ρ
K R Venugopal
K R Venugopal
Ѡ
L M Patnaik
L M Patnaik
α Bangalore University Bangalore University

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P2DM-RGCD: PPDM Centric Classification Rule Generation Scheme

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Abstract

In present day applications the approach of data mining and associated privacy preservation plays a significant role for ensuring optimal mining function. The approach of privacy preserving data mining (PPDM) emphasizes on ensuring security of private information of the participants. On the contrary majority of present mining applications employ the vertically partitioned data for mining utilities. In such scenario when the overall rule is divided among participants, some of the parties remain with fewer rules sets and thus the classification accuracy achieved by them always remain questionable. On the other hand, the consideration of private information associated with any part will violate the approach of PPDM. Therefore, in order to eliminate such situations and to provide a facility of rule regeneration in this paper, a highly robust and efficient rule regeneration scheme has been proposed ensures optimal classification accuracy without using any critical user information for rule generation. The proposed system developed a rule generation function called cumulative dot product (P2DM-RGCD) rule regeneration scheme. The developed algorithm generates two possible optimal rule generation and update functions based on cumulative updates and dot product. The proposed system has exhibited optimal response in terms of higher classification accuracy, minimum information loss and optimal training efficiency.

References

7 Cites in Article
  1. Swamy Kumara,S H; K R Manjula,; Venugopal,S S; L M Iyengar,Patnaik (2013). A NOVEL PPDM PROTOCOL FOR DISTRIBUTED PEER TO PEER INFORMATION SOURCES.
  2. Swamy Kumara,S H; K R Manjula,; Venugopal,S S; L M Iyengar,Patnaik (2014). A Data Mining Perspective in Privacy Preserving Data Mining Systems.
  3. O Dehzangi,M Zolghadri,S Taheri,S Fakhrahmad (2007). Efficient Fuzzy Rule Generation: A New Approach Using Data Mining Principles and Rule Weighting.
  4. Myung-Won Kim,Joonggeun Lee,; Changwoo,Min (1228). Efficient fuzzy rule generation based on fuzzy decision tree for data mining.
  5. M Sabu,G Raju (2011). Rule induction using Rough Set Theory -An application in agriculture.
  6. Ji Dan,; Qiujianlin,; Gu,Xiang,Chen Li,; He Peng (2010). A Synthesized Data Mining Algorithm Based on Clustering and Decision Tree.
  7. Dragos Trinca,Sanguthevar Rajasekaran (2007). Towards a Collusion-Resistant Algebraic Multi-Party Protocol for Privacy-Preserving Association Rule Mining in Vertically Partitioned Data.

Funding

No external funding was declared for this work.

Conflict of Interest

The authors declare no conflict of interest.

Ethical Approval

No ethics committee approval was required for this article type.

Data Availability

Not applicable for this article.

How to Cite This Article

S Kumara Swamy. 2015. \u201cP2DM-RGCD: PPDM Centric Classification Rule Generation Scheme\u201d. Global Journal of Computer Science and Technology - C: Software & Data Engineering GJCST-C Volume 15 (GJCST Volume 15 Issue C2): .

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Journal Specifications

Crossref Journal DOI 10.17406/gjcst

Print ISSN 0975-4350

e-ISSN 0975-4172

Keywords
Classification
GJCST-C Classification: H.3.4
Version of record

v1.2

Issue date

March 30, 2015

Language
en
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In present day applications the approach of data mining and associated privacy preservation plays a significant role for ensuring optimal mining function. The approach of privacy preserving data mining (PPDM) emphasizes on ensuring security of private information of the participants. On the contrary majority of present mining applications employ the vertically partitioned data for mining utilities. In such scenario when the overall rule is divided among participants, some of the parties remain with fewer rules sets and thus the classification accuracy achieved by them always remain questionable. On the other hand, the consideration of private information associated with any part will violate the approach of PPDM. Therefore, in order to eliminate such situations and to provide a facility of rule regeneration in this paper, a highly robust and efficient rule regeneration scheme has been proposed ensures optimal classification accuracy without using any critical user information for rule generation. The proposed system developed a rule generation function called cumulative dot product (P2DM-RGCD) rule regeneration scheme. The developed algorithm generates two possible optimal rule generation and update functions based on cumulative updates and dot product. The proposed system has exhibited optimal response in terms of higher classification accuracy, minimum information loss and optimal training efficiency.

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P2DM-RGCD: PPDM Centric Classification Rule Generation Scheme

S Kumara Swamy
S Kumara Swamy Bangalore University
Manjula S H
Manjula S H
K R Venugopal
K R Venugopal
L M Patnaik
L M Patnaik

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