Cover image for Data mining and uncertain reasoning : an integrated approach
Title:
Data mining and uncertain reasoning : an integrated approach
Personal Author:
Publication Information:
New York, N.Y. : John Wiley & Sons, 2001
ISBN:
9780471388784

Available:*

Library
Item Barcode
Call Number
Material Type
Item Category 1
Status
Searching...
30000010046445 QA76.9.D343 C47 2001 Open Access Book Book
Searching...
Searching...
30000010046444 QA76.9.D343 C47 2001 Open Access Book Book
Searching...

On Order

Summary

Summary

An expert guide for applying data mining with uncertain reasoning to a wide range of uses

This volume presents a holistic view of data mining by integrating this diverse and exciting field with uncertain reasoning. It treats a wide range of issues and examines the state of the art in both fields while summarizing vital concepts that can normally only be found in various separate resources.

The author concentrates on practical aspects of data mining-such as infrastructure and overall processes-but also discusses some selected algorithms and performance-related issues. Several important topics are addressed specifically, such as bridging the fields of machine learning and data mining and the discovery of influential association rules. In addition, the author discusses data warehousing as an enabling technique for data mining. Case studies are included throughout to illustrate important concepts.

Data Mining and Uncertain Reasoning is a practical reference for practitioners in various interrelated fields. Each subject is treated with both basic introductory and advanced technical descriptions, making the book suitable for students and practitioners at various levels of experience.


Author Notes

ZHENGXIN CHEN is Professor in the Department of Computer Science at the University of Nebraska.


Table of Contents

What This Book Is About
Basics of Data Mining
Enabling Techniques and Advanced Features of Data Mining
Dealing with Uncertainty in Manipulation of Data
Data Mining Tasks for Knowledge Discovery
Bayesian Networks and Artificial Neural Networks
Uncertain Reasoning Techniques for Data Mining
Data Mining Lifecycle with Uncertainty Handling: Case Studies and Software Tools
Intelligent Conceptual Query Answering with Uncertainty: Basic Aspects and Case Studies
References
Index