Data Mining and Decision Support: Integration and CollaborationDunja Mladenic, Nada Lavrač, Marko Bohanec, Steve Moyle Data mining deals with finding patterns in data that are by user-definition, interesting and valid. It is an interdisciplinary area involving databases, machine learning, pattern recognition, statistics, visualization and others. Independently, data mining and decision support are well-developed research areas, but until now there has been no systematic attempt to integrate them. Data Mining and Decision Support: Integration and Collaboration, written by leading researchers in the field, presents a conceptual framework, plus the methods and tools for integrating the two disciplines and for applying this technology to business problems in a collaborative setting. |
From inside the book
Results 1-5 of 34
His research covers (collaborative) data mining, including association and classification rules, and Web mining. ... decision support systems masters program at the University of Porto, and vice-president of the Portuguese AI Society.
Her research focuses on machine learning and data mining, with applications to linguistic rule discovery and business problems. ... Technical University in Prague, and president of the Czech Society for Cybernetics and Informatics.
... classification, regression, association, clustering — and searching for patterns and models of interest. 5. ... In addition to the CRISP-DM standardized methodology for building data mining applications, standards covering specific ...
3.2.1 Association rule induction The task of discovering association rules has received much attention in the data mining community. The problem of inducing association rules (Agrawal, et al., 1996) is defined as follows: Given a set of ...
learning and classification rule learning can be used to solve the subgroup discovery task, as in the case of propositional ... Further analysis, using association rules for subgroup discovery, confirmed that such an accident frequently ...
What people are saying - Write a review
Contents
1 | |
TEXT AND WEB MINING | 15 |
DECISION SUPPORT | 23 |
INTEGRATION OF DATA MINING AND DECISION | 37 |
COLLABORATION IN A DATA MINING VIRTUAL | 49 |
DATA MINING PROCESSES AND COLLABORATION | 63 |
AN INTRODUCTION | 80 |
SUPPORTING | 91 |
MINING 21 YEARS OF | 142 |
ANALYSIS OF A DATABASE OF RESEARCH PROJECTS | 157 |
WEBSITE ACCESS ANALYSIS FOR A NATIONAL | 167 |
FIVE DECISION SUPPORT APPLICATIONS | 177 |
COLLABORATIVE DATA MINING WITH RAMSYS | 215 |
LESSONS LEARNED FROM DATA MINING DECISION | 237 |
A KNOWLEDGE | 247 |
ACADEMIABUSINESS PARTNERSHIP MODELS | 261 |
PREPROCESSING FOR DATA MINING AND DECISION | 107 |
DATA MINING AND DECISION SUPPORT INTEGRATION | 118 |
APPLICATIONS OF DATA MINING | 131 |
Subject index 271 | 270 |