Document - eBookmela
Loading...

Database support for data mining applications : discovering knowledge with inductive queries | Meo, Rosa, Lanzi, Pier Luca, 1967-, Klemettinen, Mika

Likes0
Telegram icon Share on Telegram

Database support for data mining applications : discovering knowledge with inductive queries

User Rating: Be the first one!

Author: Meo, Rosa, Lanzi, Pier Luca, 1967-, Klemettinen, Mika

Added by: sketch

Added Date: 2015-12-29

Publication Date: 2004

Language: eng

Subjects: Data mining, Database searching, Database management, Databases

Publishers: Berlin ; New York : Springer

Collections: folkscanomy miscellaneous, folkscanomy, additional collections

ISBN Number: 3540224793

Pages Count: 300

PPI Count: 300

PDF Count: 1

Total Size: 177.41 MB

PDF Size: 2.83 MB

Extensions: djvu, gif, pdf, gz, zip, torrent, log, mrc

Archive Url

Downloads: 782

Views: 832

Total Files: 18

Media Type: texts

Description

Database Support for Data Mining Applications: Discovering Knowledge with Inductive Queries
Author: Rosa Meo, Pier Luca Lanzi, Mika Klemettinen
Published by Springer Berlin Heidelberg
ISBN: 978-3-540-22479-2
DOI: 10.1007/b99016

Table of Contents:

  • Inductive Databases and Multiple Uses of Frequent Itemsets: The cInQ Approach
  • Query Languages Supporting Descriptive Rule Mining: A Comparative Study
  • Declarative Data Mining Using SQL3
  • Towards a Logic Query Language for Data Mining
  • A Data Mining Query Language for Knowledge Discovery in a Geographical Information System
  • Towards Query Evaluation in Inductive Databases Using Version Spaces
  • The GUHA Method, Data Preprocessing and Mining
  • Constraint Based Mining of First Order Sequences in SeqLog
  • Interactivity, Scalability and Resource Control for Efficient KDD Support in DBMS
  • Frequent Itemset Discovery with SQL Using Universal Quantification
  • Deducing Bounds on the Support of Itemsets
  • Model-Independent Bounding of the Supports of Boolean Formulae in Binary Data
  • Condensed Representations for Sets of Mining Queries
  • One-Sided Instance-Based Boundary Sets
  • Domain Structures in Filtering Irrelevant Frequent Patterns
  • Integrity Constraints over Association Rules

Includes bibliographical references and author index
Database languages and query execution -- Support for KDD-process
eBookmela
Logo
Register New Account