LIBRISTO
LIBROAMANTO
mandatory
Become part of a community of book lovers from all over the world and get access to a whole bunch of benefits. Create an account for free
0
Free delivery for purchases over 69.99 €
DPD courier 5.99 Bpost point 7.99 Bpost 7.49 DPD point 3.49 GLS courier 4.99

Free delivery for orders over 69.99 euro.

Algorithms for Frequent Itemset Mining and Database Sanitization

Data Mining

Language EnglishEnglish
Book Paperback
Book Algorithms for Frequent Itemset Mining and Database Sanitization Yu-Chiang Li
Libristo code: 06827949
Publishers VDM Verlag Dr. Müller, November 2008
Data mining techniques have been widely applied in numerous areas and represent an important field o... Full description
? points 167 b
68.78
Print on demand Shipping in 17-27 days

Up to 30 days for returns


Customers also purchased


Data mining techniques have been widely applied in numerous areas and represent an important field of research. In Chapter 1, the research motivation, objectives and contributions are introduced. Chapter 2 introduces background work on data mining, share mining, utility mining, and privacy-preserving data mining. Chapter 3 describes the proposed NFP-growth method for discovering frequent itemsets. Chapters 4 through 6 explain several novel fast algorithms for share mining --- including FSM, EFSM, SuFSM, ShFSM, and DCG --- to efficiently generate all share- frequent itemsets. Furthermore, Chapter 7 presents the Isolated Items Discarding Strategy (IIDS), which can be applied to any existing level-wise share mining or utility mining method to reduce candidates and to improve its performance. Next, Chapter 8 introduces the proposed Maximum Item Conflict First (MICF) algorithm, which has a low sanitization rate and achieves a low misses cost, for hiding all restrictive itemsets. At the end of Chapters 3 through 8, the experimental results and evaluates the performance of the proposed algorithms are provided. Finally, Chapter 9 draws a summary of the dissertation.

Actress & Polyglot
EWA KASP for
Play video
Ewa Kasp
Libristo has the largest selection of foreign-language books. That’s why I buy my books there.

About the book

Full name Algorithms for Frequent Itemset Mining and Database Sanitization
Author Yu-Chiang Li
Language English
Binding Book - Paperback
Date of issue 2009
Number of pages 164
EAN 9783639199086
Libristo code 06827949
Weight 261
Dimensions 150 x 220 x 10
Give this book today
It's easy
1 Add to cart and choose Deliver as present at the checkout 2 We'll send you a voucher 3 The book will arrive at the recipient's address

You might also be interested in


Cobbler O' Kirkiebrae. a Romance of Galloway. Andrew Armstrong / Book Paperback
common.buy 25.11
Art of Chip Carving Tatiana Baldina / Book Paperback
common.buy 18.04
Exporting Global Jihad Tom Smith / Book Paperback
common.buy 39.43
Bengal - India's Rebellious Spirit Temple of India Foundation / Book Paperback
common.buy 11.19
Behavioral Finance: The Coming Of Age Itzhak Venezia / Book Hardback
common.buy 188.81
To Nurse Means to Nurture Part Three Brian Gene Evans / Book Paperback
common.buy 8.06
Trade and Women's Economic Empowerment Yiagadeesen Samy / Book Paperback
common.buy 42.56
Secret Kingdom: Fairytale Forest Rosie Banks / Book Paperback
common.buy 6.24
It Looked Like Spilt Milk Big Book Charles G. Shaw / Book Paperback
common.buy 20.87
Cities in Transition Wowo Ding / Book Paperback
common.buy 44.98
Food Insecurity: A Reference Handbook Whitney Fung Uy / Book Hardback
common.buy 86.53
Transforming Economics Paul Lewis / Book Paperback
common.buy 84.31
City in Cultural Context David Sopher / Book Hardback
common.buy 359.07
Creation of States in International Law James R Crawford / Book Hardback
common.buy 391.35

Login

Log in to your account. Don't have a Libristo account? Create one now!

 
mandatory
mandatory

Don’t have an account? Discover the benefits of having a Libristo account!

With a Libristo account, you'll have everything under control.

Create a Libristo account
Book advisor Libroamiko
Hi, I'm Libroamiko, can I help?