Checkout 
No items in cart 
| Checkout | My Account | Help
BiggerBooks.com Free shipping. Click here for details.
Free Shipping. $59 or more. Details here!
100% Satisfaction Guaranteed | A BIGGER selection for a BETTER price!
      SEARCH
Advanced Search
Browse
Art
Biographies
Business/Investing
Children's Books
Computers/Internet
Cooking/Beverages
Health/Fitness
History
Fiction
Parenting & Families
Reference
Religious/Spirituality
Science
Sports
Travel

Item Detail


Book Image

Data Mining for Scientific and Engineering Applications

Author(s): Grossman, Robert L.; Kamath, Chandrika; Kegelmeyer, Philip; Kumar, Vipin; Namburu, Raju R.
Edition: 1st
ISBN10: 1402000332
ISBN13: 9781402000331
Cover: Hardcover
 
New Copy: Usually Ships in 5-7 Business Days
 
List Price $271.00 
Our Price $258.94
You save $12.06
 
 
 
 
 

SummaryTable of Contents
Advances in technology are making massive data sets common in many scientific disciplines, such as astronomy, medical imaging, bio-informatics, combinatorial chemistry, remote sensing, and physics. To find useful information in these data sets, scientists and engineers are turning to data mining techniques. This book is a collection of papers based on the first two in a series of workshops on mining scientific datasets. It illustrates the diversity of problems and application areas that can benefit from data mining, as well as the issues and challenges that differentiate scientific data mining from its commercial counterpart. While the focus of the book is on mining scientific data, the work is of broader interest as many of the techniques can be applied equally well to data arising in business and web applications. Audience: This work would be an excellent text for students and researchers who are familiar with the basic principles of data mining and want to learn more about the application of data mining to their problem in science or engineering.

Illustrates the diversity of problems and application areas that can benefit from data mining, as well as the issues and challenges that differentiate scientific data mining from its commercial counterpart. Softcover available.
Foreword ix
List of Contributors
xi
List of Reviewers
xvii
Preface xix
On Mining Scientific Datasets
1(22)
Chandrika Kamath
Understanding High Dimensional and Large Data Sets: Some Mathematical Challenges and Opportunities
23(12)
Jagdish Chandra
Data Mining at the Interface of Computer Science and Statistics
35(28)
Padhraic Smyth
Mining Large Image Collections
63(22)
Michael C. Burl
Mining Astronomical Databases
85(10)
Roberta M. Humphreys
Juan E. Cabanela
Jeffrey Kriessler
Searching for Bent-Double Galaxies in the First Survey
95(20)
Chandrika Kamath
Erick Cantu-Paz
Imola K. Fodor
Nu Ai Tang
A Dataspace Infrastructure for Astronomical Data
115(10)
Robert Grossman
Emory Creel
Marco Mazzucco
Roy Williams
Data Mining Applications in Bioinformatics
125(16)
Naren Ramakrishanan
Ananth Y. Grama
Mining Residue Contacts in Proteins
141(24)
Mohammed J. Zaki
Chris Bystroff
Kdd Services at the Goddard Earth Sciences Distributed Archive Center
165(18)
Christopher Lynnes
Robert Mack
Data Mining in Integrated Data Access and Data Analysis Systems
183(18)
Ruixin Yang
Menas Kafatos
Kwang-Su Yang
X. Sean Wang
Spatial Data Mining for Classification, Visualisation and Interpretation with Artmap Neural Network
201(22)
Weiguo Liu
Sucharita Gopal
Curtis Woodcock
Real Time Feature Extraction for the Analysis of Turbulent Flows
223(16)
I. Marusic
G.V. Candler
V. Interrante
P.K. Subbareddy
A. Moss
Data Mining for Turbulent Flows
239(18)
Eui-Hong (Sam) Han
George Karypis
Vipin Kumar
Evita-Efficient Visualization and Interrogation of Tera-Scale Data
257(24)
Raghu Machiraju
James E. Fowler
David Thompson
Bharat Soni
Will Schroeder
Towards Ubiquious Mining Distributed Data
281(26)
Hillol Kargupta
Krishnamoorthy Sivakumar
Weiyun Huang
Rajeev Ayyagari
Rong Chen
Byung-Hoon Park
Erik Johnson
Decomposable Algorithms for Data Mining
307(12)
Raj Bhatnagar
HDDI: Hierarchical Distributed Dynamic Indexing
319(16)
William M. Pottenger
Yong-Bin Kim
Daryl D. Meling
Parallel Algorithms for Clustering High-Dimensional Large-Scale Datasets
335(22)
Harsha Nagesh
Sanjay Goil
Alok Choudhary
Efficient Clustering of Very Large Document Collections
357(26)
Inderjit S. Dhillon
James Fan
Yuqiang Guan
A Scalable Hierarchical Algorithm for Unsupervised Clustering
383(18)
Daniel Boley
High-Performance Singular Value Decomposition
401(24)
David B. Skillicorn
Xiaolan Yang
Mining High-Dimensional Scientific Data Sets Using Singular Value Decomposition
425(14)
Ekaterina Maltseva
Clara Pizzuti
Domenico Talia
Spatial Dependence in Data Mining
439(22)
James P. LeSage
R. Kelley Pace
Sparc: Spatial Association Rule-Based Classification
461(26)
Jiawei Han
Anthony K. H. Tung
Jing He
What's Spatial About Spatial Data Mining: Three Case Studies
487(28)
Shashi Shekhar
Yan Huang
Weili Wu
C.T. Lu
S. Chawla
Predicting Failures in Event Sequences
515(26)
Mohammed J. Zaki
Neal Lesh
Mitsunori Ogihara
Efficient Algorithms for Mining Long Patterns in Scientific Data Sets
541(26)
Ramesh C. Agarwal
Charu C. Aggarwal
Probabilistic Estimation in Data Mining
567(24)
Edwin P. D. Pednault
Chidanand Apte
Classification Using Association Rules: Weaknesses and Enhancements
591
Bing Liu
Yiming Ma
Ching-Kian Wong

100% Satisfaction Guaranteed | A BIGGER Selection at a BETTER price!
Better Selection, Better Prices

Biggerbooks.com offers a wide selection of new and used books, bestselling books, new releases, textbooks and more. Biggerbooks partners with the largest publishers and distribution centers to offer the cheapest book prices possible. Our goal is to provide you the best selection of books with the best prices.

HACKER SAFE certified sites prevent over 99.9% of hacker crime.
SSL