DATA MINING: NEXT GENERATION CHALLENGES AND FUTURE DIRECTIONS
By
KARGUPTA, HILLOL,
JOSHI, ANUPAM
SHIVAKUMAR, KRISHNAMOORTHY
YESHA YELENA (Edited by)
 Data Mining Kargupta
Data Mining, or Knowledge Discovery, has become an indispensable technology for business and researchers in many fields. Drawing on work in such areas as statistics, machine learning, pattern recognition, databases, and high performance computing, data mining extracts useful information from the large data set now available to industry and science. This collection surveys the most recent advances in the field and charts directions for future research.
The first part discusses topics that include distributed data mining algorithms for new application areas, several aspects of next-generation data mining systems and applications, and detection of recurrent patterns in digital media. The second examines such topics as bio-surveillance, marshalling evidence through data mining, and link discovery. The third focuses at scientific data mining; and the topics include mining temporally-varying phenomena, data sets using graphs, and spatial data mining. The last part considers web, semantics and data mining, examining advances in text mining algorithms and software, semantic webs, and other subjects.
The book serves as a supplementary text for the students of Information Technology.
It should also be of interest to the professionals of knowledge management.
Contents
Foreword
Preface
Pervassive, Distributed, and Stream Data Mining
1.     Existential Pleasures of Distributed Data Mining
Hillol Kargupta and Krishamoorthy Sivakumar
2.     Research Issues in Mining and Monitoring of Intelligence Pata
Alan Demers, Johannes Gehrke, and Mirek Riedewald
3.     A Consensus Framework for Integrating Distributed Clusterings Under Limited Knowledge Sharing
Joydeep Ghosh, Alexander Strehl, and Srujana Merugu
4.     Design of Distributed Data Mining Applications on the Knowledge Grid
Mario Cannataro, Domenico Talia, and Paolo Trunfio
5.     Photonic Data Services: Integrating Data, Network and Path Services to Support Next Generation Data Mining Applications
Robert L. Grossman, Yunhong Gu, Dave Hanley, Xinwei Hong, Jorge Levera, Marco Mazzucco, David Lillethun, Joe Mambretti, and Jeremy Weinberger
6.     Mining Frequent Patterns in Data Streams at Multiple Time Granularities
‘Chris Giannella, Jiawei Han, Jian Pei, Xifeng Yan, and Philip S. Yu
7.     Efficient Data-Reduction Methods for On-Line Association Rule Discovery
Hervé Bronnimann, Bin Chen, Manoranjan Dash, Peter Haas, and Peter Scheuermann
8.     Discovering Recurrent Events in Multichannel Data Streams Using Unsupervised Methods
Milind R. Naphade, Chung-Sheng Li, and Thomas S. Huang
Counterterrorism, Privacy, and Data Mining
9.     Data Mining for Counterterrorism
Bhavani Thuraisingham
10.   Biosurveillance and Outbreak Detection
Paola Sebastiani and Kenneth D. Mandl
11.   MINDS — Minnesota Intrusion Detection System
Levent Ertöz; Eric Eilertson, Aleksandar Lazarevic, Pang-Ning Tan. Vipin Kumar, Jaideep Srivastava, and Paul Dokas
12.   Marshalling Evidence Through Data Mining in Support of  Counter Terrorism
Daniel Barbara. James J. Nolan. David Schum, and Arun Sood
13.   Relational Data Mining with Inductive Logic Programming for Link Discovery
Raymond 1. Mooney. Prem Melville. Lappoon Rupert Tang. Jude Shavlik, Inês de
Castro Dutra. David Page and Vitor Santos Costa
14.   Defining Privacy for Data Mining
Chris Clifton. Murat Kantarctoglu, and Jaideep Vaidya
Scientific Data Mining
15    Mining Temporally-Varying Phenomena in Scientific Datasets
Raghu Machiraju, Srinivasan Parthasarathy, John Wilkins, David S. Thompson, Boyd Gatlin, David Richie, Tat-Sang S. Choy, Ming Jiang, Sameep Mehta, Matthew Coatney, Stephen A. Barr, and Kaden Hazzard
16    Methods for Mining Protein Contact Maps
Mohammed J. Zaki, Jingjing Hu, and Chris Bystroff
17    Mining Scientific Data Sets using Graphs
Michihiro Kuramochi, Mukund Deshpande, and George Karypis
18    Challenges in Environmental Data Warehousing and Mining
Nabil R. Adam, Vijayalakshmi Atluri, Dihua Guo, and Songmei Yu
19    Trends in Spatial Data Mining
Shashi Shekhar, Pusheng Zhang, Yan Huang, and Ranga Raju Vatsavai
20    Challenges in Scientific Data Mining: Heterogeneous, Biased, and Large Samples
Zoran Obradovic and Slobodan Vucetic
Web, Semantics, and Data Mining
21.   Web Mining — Concepts, Applications, and Research Directions
Jaideep Srivastava. Prasanna Desikan, and Yipin Kumar
22    Advancements in Text Mining Algorithms and Software
Svetlana Y. Mironova, Michael W. Berry. Scott Atchley. and Micah Beck
23    On Data Mining, Semantics, and Intrusion Detection: What to Dig for and Where to Find It
Anupam Joshi and Jeffrey L. Undercoffer
24.   Usage Mining for and on the Semantic Web
Bettina Berendt. Gerd Stumme, and Andreas Hotho
Bibliography
Index
About the Authors
HILLOL KARGUPTA is teaching in the Department of Computer Science and Electrical Engineering at the University of Maryland Baltimore County. The first author is also affiliated with AGNIKLLC in Columbia.
ANUPAM JOSHI is teaching in the Department of Computer Science and Electrical Engineering at the University of Maryland Baltimore County. The first author is also affiliated with AGNIKLLC in Columbia.
Krishnamoorthy Sivakumar is an Assistant Professor at the School of Electrical Engineering and Computer Science, Washington State University.
Yelena Yesha is teaching in the Department of Computer Science and Electrical Engineering at the University of Maryland Baltimore County. The first author is also affiliated with AGNIKLLC in Columbia.
Buy this book written by expert from our website __

Leave a Reply

Your email address will not be published. Required fields are marked *