1st Edition

Computational Intelligent Data Analysis for Sustainable Development

Edited By Ting Yu, Nitesh Chawla, Simeon Simoff Copyright 2013
440 Pages 81 B/W Illustrations
by Chapman & Hall

440 Pages 81 B/W Illustrations
by Chapman & Hall

440 Pages
by Chapman & Hall

Going beyond performing simple analyses, researchers involved in the highly dynamic field of computational intelligent data analysis design algorithms that solve increasingly complex data problems in changing environments, including economic, environmental, and social data. Computational Intelligent Data Analysis for Sustainable Development presents novel methodologies for automatically... Read more

Computational Intelligent Data Analysis for Sustainable Development: An Introduction and Overview
Ting Yu, Nitesh Chawla, and Simeon Simoff

Integrated Sustainability Analysis
Tracing Embodied CO2 in Trade Using High-Resolution Input-Output Tables
Daniel Moran and Arne Geschke

Aggregation Effects in Carbon Footprint Accounting Using Multi-Region Input-Output Analysis
Xin Zhou, Hiroaki Shirakawa, and Manfred Lenzen

Computational Intelligent Data Analysis for Climate Change
Climate Informatics
Claire Monteleoni, Gavin A. Schmidt, Francis Alexander, Alexandru Niculescu-Mizil, Karsten Steinhaeuser, Michael Tippett, Arindam Banerjee, M. Benno Blumenthal, Auroop R. Ganguly, Jason E. Smerdon, and Marco Tedesco

Computational Data Sciences for Actionable Insights on Climate Extremes and Uncertainty
Auroop R. Ganguly, Evan Kodra, Snigdhansu Chatterjee, Arindam Banerjee, and Habib N. Najm

Computational Intelligent Data Analysis for Biodiversity and Species Conservation
Mathematical Programming Applications to Land Conservation and Environmental Quality
Jacob R. Fooks and Kent D. Messer

Computational Intelligent Data Analysis for Smart Grid and Renewable Energy
Data Analysis Challenges in the Future Energy Domain
Frank Eichinger, Daniel Pathmaperuma, Harald Vogt, and Emmanuel Müller

Electricity Supply without Fossil Fuels
John Boland, Peter Pudney, and Jerzy Filar

Data Analysis for Real-Time Identification of Grid Disruptions
Varun Chandola, Olufemi Omitaomu, and Steven J. Fernandez

Statistical Approaches for Wind Resource Assessment
Kalyan Veeramachaneni, Xiang Ye, and Una-May O’Reilly

Computational Intelligent Data Analysis for Sociopolitical Sustainability
Spatio-Temporal Correlations in Criminal Offense Records
Jameson L. Toole, Nathan Eagle, and Joshua B. Plotkin

Constraint and Optimization Techniques for Supporting Policy Making
Marco Gavanelli, Fabrizio Riguzzi, Michela Milano, and Paolo Cagnoli

Index

Biography

Ting Yu, Ph.D., is an honorary research fellow in the Integrated Sustainability Analysis Group at the University of Sydney. He is also a transport modeler for the Transport for NSW. His research interests include machine learning, data mining, parallel computing, applied economics, and sustainability analysis. He earned a Ph.D. in computing science from the University of Technology, Sydney.

Nitesh Chawla, Ph.D., is an associate professor in the Department of Computer Science and Engineering, director of the Interdisciplinary Center for Network Science and Applications, and director of the Data Inference Analysis and Learning Lab at the University of Notre Dame. A recipient of multiple awards for research and teaching, Dr. Chawla is chair of the IEEE Computational Intelligence Society Data Mining Technical Committee and associate editor of IEEE Transactions on Systems, Man and Cybernetics (Part B) and Pattern Recognition Letters. His research focuses on machine learning, data mining, and network science.

Simeon Simoff, Ph.D., is dean of the School of Computing, Engineering and Mathematics at the University of Western Sydney. He is also a founding director and fellow of the Institute of Analytics Professionals of Australia. He serves on the American Society of Civil Engineering Technical Committees on Data and Information Management and on Intelligent Computing and is an editor of the Australian Computer Society’s Conferences in Research and Practice in Information Technology.