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Privacy Preserving Data Mining
Details
Data mining is under attack from privacy advocates because of a misunderstanding about what it actually is and a valid concern about how it s generally done. This analysis shows how technology from the security community can change data mining for the better, providing all its benefits while still maintaining privacy. Recently, a new class of data mining methods, known as privacy preserving data mining (PPDM) algorithms has been developed by the research community working on security and knowledge discovery. The aim of these algorithms is the extraction of relevant knowledge from large amount of data, while protecting at the same time sensitive information. Several PPDM techniques have been developed that allow one to hide sensitive item sets or patterns, before the data mining process is executed, such as randomization, k anonymity, data perturbation, secure multiparty computation etc.We mainly analysis two most general & secure approach of PPDM Data Perturbation &Secure Multiparty Computation. Based on the analysis, the solution for PPDM is developed for demonstration. This Analysis should be especially useful to professionals in Cryptography and Data Mining fields.
Autorentext
Shampa Bhattacharyya received her M.Tech in CSE in 2014 from HIT,HALDIA under WBUT. Her main areas of interest include Network Security, Data Mining and Soft Computing.Amit Bhattacharyya is acting as Assistant Professor of ECE Dept at HIT, HALDIA. His main areas of interest include DSP, Control Systems and Microprocessor.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783659669071
- Anzahl Seiten 100
- Genre Allgemein & Lexika
- Herausgeber LAP Lambert Academic Publishing
- Gewicht 167g
- Untertitel Methods, Execution and Efficiency
- Größe H220mm x B150mm x T7mm
- Jahr 2015
- EAN 9783659669071
- Format Kartonierter Einband
- ISBN 3659669075
- Veröffentlichung 31.01.2015
- Titel Privacy Preserving Data Mining
- Autor Shampa Bhattacharyya , Amit Bhattacharyya
- Sprache Englisch