DDDM 2008: The 2 nd International Workshop on Domain Driven Data Mining Philip S. Yu, Yanchang Zhao, Graham Williams, Carlos Soares.

Slides:



Advertisements
Similar presentations
Agents and Data Mining Interaction: Where to go next? Longbing CAO University of Technology Sydney.
Advertisements

Prof. Carolina Ruiz Department of Computer Science Worcester Polytechnic Institute INTRODUCTION TO KNOWLEDGE DISCOVERY IN DATABASES AND DATA MINING.
Local Discriminative Distance Metrics and Their Real World Applications Local Discriminative Distance Metrics and Their Real World Applications Yang Mu,
(The Global Programme of Research On Climate Change Vulnerability, Impacts and Adaptation) Adaptation Knowledge Day V: Climate Change Adaptation Gaps BONN,
Third International Workshop on Knowledge Discovery from Data Streams, 2006 Classification of Changes in Evolving Data Streams using Online Clustering.
1º HARVARD UNIVERSITY - USA 2º UNIVERSITY OF CAMBRIDGE - UK.
AAA ASIA-PACIFIC SPECIAL TOPIC SESSION CHAIRED BY GAYLE KERR, QUEENSLAND UNIVERSITY OF TECHNOLOGY, AUSTRALIAAND KARA CHAN, HONG KONG BAPTIST UNIVERSITY,
Data Mining and Intrusion Detection
Sustainable Energy Systems Int’l H 2 Safety Conf, Pisa, Italy, 8-10 Sep IPHE projects focus on pre-competitive collaborative research, development.
ER 2006 Interesting Facts and Figures about the Program.
IFAC International Federation of Automatic Control.
D 3 M: D 3 M: Domain-Driven Data Mining An Overview of Domain-Driven Data Mining: Toward Actionable Knowledge Discovery (AKD) Longbing Cao Faculty of Engineering.
Panel: The Art of Data Mining, and the Quest for Greater Insight Moderator: Moderator: Kate Smith-Miles, Deakin University, Australia Panelists: Panelists:
ADVISORY COMMITTEES Jen-Yao Chung IBM T. J. Watson Research Center, USA Janming Ho Academia Sinica, Taiwan Keith C.C. Chan The HK Polytechnic University,
SSTD 2011 Research Track Yufei Tao, Dieter Pfoser PC co-chairs.
The ASE International Conference on Big Data aims to bring together academic scientists, researchers and scholars to exchange and share their experiences.
KDD’14 Debrief 24 th April - 27 st, th April - 27 st August, 2014 New York City, US WING Monthly Meeting (Oct 24, 2014) Presented by Xiangnan He.
Computational Finance and Economics Technical Committee Chair: Antoaneta Serguieva (UK) Vice Chairs: Robert Golan (US) Akira Namatame (Japan) Vijayalakshmi.
Knowledge Discovery Centre: CityU-SAS Partnership 1 Speakers: Prof Y V Hui, CityU Dr H P Lo, CityU Dr Sammy Yuen, CityU Dr K W Cheng, SAS Institute Mr.
Behavior Informatics and Analytics: Let Behavior Talk Longbing Cao Data Sciences & Knowledge Discovery Lab Centre for Quantum Computation and Intelligent.
Committee Meeting ASME MESA Mechatronic and Embedded Systems and Applications Moderators: Harry H. Cheng, UC Davis Zuomin Dong, Univ. of Victoria, Canada.
Agents and Data Mining Interaction (ADMI’08) Longbing CAO University of Technology Sydney.
-Honorary Chairs President Jow-Lay Huang National University of Kaohsiung, Taiwan Prof. Jason Yi-Bing Lin Ministry of Science and Technology, Taiwan -Steering.
INSTITUTE OF COMPUTING TECHNOLOGY Opening Remark for 1 st BPOE Workshop Jianfeng Zhan, Chinese Academy of Sciences Santa Clara, CA, USA.
World Cities Adapted from a presentation by David Palmer & Phil Kline.
IEEE Macau Section. Prof. Rui Martins, Chairman R10 Annual Meeting in Adelaide, Australia – April 16 th and 17 th 2004 EEE Activities in Macao Birth,
REG set up: first steps… Alison Chisholm 7.40 am – 7:45 am.
Data Mining. 2 Models Created by Data Mining Linear Equations Rules Clusters Graphs Tree Structures Recurrent Patterns.
Student and Labor Mobility in e-Tourism (Creative University) The 2 nd presentation Ou Yusong October 17th,2011.
Data Mining GyuHyeon Choi. ‘80s  When the term began to be used  Within the research community.
1 Association of Pacific Rim Universities Dr Lawrence Loh Secretary General Association of Pacific Rim Universities 22 March, nd.
Designing the Microbial Research Commons: An International Symposium Overview National Academy of Sciences Washington, DC October 8-9, 2009 Cathy H. Wu.
Discovery Science 2006 Report of the Program Chairs Klaus P. Jantke, General Chair Nada Lavrač and Ljupčo Todorovski, Program Chairs Ricard Gavalda, Local.
PRIVP Huang Overview of Successes and Challenges
Predictive Modeling with Heterogeneous Sources Xiaoxiao Shi 1 Qi Liu 2 Wei Fan 3 Qiang Yang 4 Philip S. Yu 1 1 University of Illinois at Chicago 2 Tongji.
Name: Sujing Wang Advisor: Dr. Christoph F. Eick
The International Federation for Information Processing.
1 ENTROPY-BASED CONCEPT SHIFT DETECTION PETER VORBURGER, ABRAHAM BERNSTEIN IEEE ICDM 2006 Speaker: Li HueiJyun Advisor: Koh JiaLing Date:2007/11/6 1.
1 ICDM 2004 Business Meeting 11/4/2004 Data Mining on ICDM Submission Data Shusaku Tsumoto Ning Zhong and Xindong Wu.
ARTIFICIAL INTELLIGENCE FOR HOME LAND SECURITY. THE AUTHORS Phd, Information Systems from New York University Management information systems, University.
ICDM 2003 Review Data Analysis - with comparison between 02 and 03 - Xindong Wu and Alex Tuzhilin Analyzed by Shusaku Tsumoto.
Multi-Agent & Data Mining Group, UTS, Australia Chengqi Zhang Faculty of Information Technology University of Technology Sydney, Australia Longbing Cao.
Jun Li, Peng Zhang, Yanan Cao, Ping Liu, Li Guo Chinese Academy of Sciences State Grid Energy Institute, China Efficient Behavior Targeting Using SVM Ensemble.
Presentation on TENCON 2013 Jianguo Huang Chair of TENCON 2013 Chair of IEEE Xi’an Section.
Distinguished Talk Dr. Jun Wang, IEEE Fellow Professor Dept. of Mechanical and Automation Engineering, The Chinese University of Hong Kong For further.
9/03 Data Mining – Introduction G Dong (WSU)1 CS499/ Data Mining Fall 2003 Professor Guozhu Dong Computer Science & Engineering WSU.
PKDD Discovery Challenge (not only) on Financial Data Petr Berka Laboratory for Intelligent Systems University of Economics, Prague
One-class Classification of Text Streams with Concept Drift
2016 International Simulation Multi-Conference AsiaSim / SCS AutumnSim 2016 SPONSORS Federation of Asian Simulation Societies (ASIASIM ) The Society for.
Rehospitalization Analytics: Modeling and Reducing the Risks of Rehospitalization Chandan K. Reddy Department of Computer Science, Wayne State University.
Read the names of the cities Sydney Los Angeles Wellington Paris Bangkok Bombay Prague Moscow.
Professor Jim Lynch Chief Executive, Forest Research, GB.
The 11th World Congress on Intelligent Control and Automation June , 2014, Shenyang, China Honorary Chairs Jian Song, China Yu Chi Ho, USA General.
NSF International Research Network Connections (IRNC) Program: TransLight/StarLight Maxine D. Brown and Thomas A. DeFanti Electronic Visualization Laboratory.
99s_First_Production_Server.jpg CC-BY : 10x 4Gb Hard Drives 2000: 5000 Linux PCs Today:
Term Project Proposal By J. H. Wang Apr. 7, 2017.
Kwei-Jay (KJ) Lin Co-Chair, TCEC Univ. California, Irvine
TC on Business Informatics and Systems
ICDIS 2018 Intelligence and Security
Jenny Bradshaw NCETM National CPD Conference 23rd March 2011
IEEE SMC 2019 October 6-9, Bari, Italy
Beijing University of Technology, China, September 28, 2006
The 31st International FLAIRS Conference May 21-23, 2018
Call For Papers The 11th World Congress on
Artificial Intelligence (AI): Algorithms and Applications
PKDD Discovery Challenge (not only) on Financial Data
Fundamental of Artificial Intelligence (CSC3180)
LAS MEJORES UNIVERSIDADES
Christoph F. Eick: A Gentle Introduction to Machine Learning
Faculty of Computer Science
Presentation transcript:

DDDM 2008: The 2 nd International Workshop on Domain Driven Data Mining Philip S. Yu, Yanchang Zhao, Graham Williams, Carlos Soares

Data Sciences & Knowledge Discovery Research Lab 2 Outline DDDM: Domain Driven Data Mining DDDM 2007 DDDM 2008

Data Sciences & Knowledge Discovery Research Lab 3 Background In the last decade, data mining has emerged as one of most vivacious areas in information technology. Although many algorithms and techniques for data mining have been proposed, it still remains an open problem to successfully apply them to discover actionable knowledge in real-life applications in various domains.

Data Sciences & Knowledge Discovery Research Lab 4 DDDM The International Workshop on Domain Driven Data Mining (DDDM) Aims: To provide a premier forum for sharing findings, knowledge, insight, experience and lessons in tackling potential challenges in discovering actionable knowledge from complex domain problems, To promote the interaction of and bridge the gap between data mining research and business expectations, and To drive a paradigm shift from traditional data-centered hidden pattern mining to domain-driven actionable knowledge discovery.

Data Sciences & Knowledge Discovery Research Lab 5 Objectives To design next-generation data mining methodology for actionable knowledge discovery and identify how KDD techniques can better contribute to critical domain problems in theory and practice; To devise domain-driven data mining techniques to strengthen business intelligence in complex enterprise applications; To present the applications of domain-driven data mining and demonstrate how KDD can be effectively deployed to solve complex practical problems; and To identify challenges and future directions for data mining research and development in the dialogue between academia and industry.

Data Sciences & Knowledge Discovery Research Lab 6 DDDM 2007 San Jose, California, USA, on 12th August 2007 In conjunction with ACM SIGKDD'07 Website: 8 papers accepted from 5 countries Organizing Committee General Chair Philips Yu, IBM T.J. Watson Research Center, USA Workshop Chairs Chengqi Zhang, University of Technology, Sydney, Australia Graham Williams, Australian Taxation Office, Australia Longbing Cao, University of Technology, Sydney, Australia Organizing Chair Yanchang Zhao, University of Technology, Sydney, Australia

Data Sciences & Knowledge Discovery Research Lab 7 DDDM 2008 Pisa, Italy, on December 15, 2008 In conjunction with IEEE ICDM'08 Website: submissions from 12 countries (including papers forwarded from main conference) 10 papers accepted, with an acceptance rate of 26%

Data Sciences & Knowledge Discovery Research Lab 8 Organizing Committee General Chair Philip S. Yu University of Illinois at Chicago, USA Program Chairs Yanchang Zhao University of Technology, Sydney, Australia Graham Williams Australian Taxation Office, Australia Carlos Soares University of Porto, Portugal

Data Sciences & Knowledge Discovery Research Lab 9 Host Data Sciences & Knowledge Discovery Research Lab Centre for Quantum Computation and Intelligent Systems University of Technology, Sydney, Australia

Data Sciences & Knowledge Discovery Research Lab 10 Program Committee Ronnie Alves Universidade do Minho, Portugal Elena Baralis Politecnico di Torino, Italy David Bell Queen's University Belfast, UK Petr Berka University of Economics of Prague, Czech Republic Jean-Francois Boulicaut INSA Lyon, France Longbing Cao University of Technology, Sydney, Australia Peter Christen The Australian National University, Australia Paulo Cortez University of Minho, Portugal Guozhu Dong Wright State University, USA Warwick Graco Australian Taxation Office, Australia Joshua Zhexue Huang The University of Hong Kong, Hong Kong Alexandros Kalousis The Universtity of Geneva, Switzerland Walter Kosters Leiden University, The Netherlands Christopher Leckie The University of Melbourne, Australia Chunhung Li Hong Kong Baptist University, Hong Kong Xue Li The University of Queensland, Australia Tsau Young Lin San Jose State University, USA

Data Sciences & Knowledge Discovery Research Lab 11 Program Committee (cont.) Donato Malerba University of Bari, Italy Engelbert Mephu Nguifo Universite d'Artois, France Ngoc Thanh Nguyen Wroclaw University of Technology, Poland Arlindo Oliveira IST/INESC-ID, Portugal Alexandre Plastino Universidade Federal Fluminense, Brazil Kulathur S. Rajasethupathy State University of New York, USA Yidong Shen Chinese Academy of Sciences, China Dan Simovici University of Massachusetts at Boston, USA Wei Wang Fudan University, China Jeffrey Xu Yu The Chinese University of Hong Kong, Hong Kong Carlo Zaniolo University of California, Los Angeles, USA Justin Zhan Carnegie Mellon University, USA Chengqi Zhang University of Technology, Sydney, Australia Huaifeng Zhang University of Technology, Sydney, Australia Mengjie Zhang Victoria University of Wellington, New Zealand Shichao Zhang Guangxi Normal University, China Zhi-Hua Zhou Nanjing University, China

Data Sciences & Knowledge Discovery Research Lab 12 TKDE Special Issue on DDDM IEEE Transactions on Knowledge and Data Engineering Special Issue on Domain Driven Data Mining Guest Editors: Chengqi Zhang, Philip S. Yu, David Bell Submission deadline: March 31, DDDM.doc DDDM.doc sactions/transactions/tkde/CFP/cfp_tkde_dom ain-driven.pdf sactions/transactions/tkde/CFP/cfp_tkde_dom ain-driven.pdf

Program 2:00 pmOpening address 2:10 pmKeynote speech Domain Driven Data Mining (D 3 M) by Longbing Cao, University of Technology, Sydney, Australia 2:40 pmSession I S2211: Food Sales Prediction: "If Only It Knew What We Know“, by Patrick Meulstee and Mykola Pechenizkiy S2205: Parameter Tuning for Differential Mining of String Patterns, by Jeremy Besson, Christophe Rigotti, Ieva Mitasiunaite, and Jean-Francois Boulicaut S2202: Discovering Implicit Redundancies in Network Communications for Detecting Inconsistent Values, by Bogdan Nassu, Takashi Nanya, and Hiroshi Nakamura S2208: Identification of Causal Variables for Building Energy Fault Detection by Semi-supervised LDA and Decision Boundary Analysis, by Keigo Yoshida, Minoru Inui, Takehisa Yairi, Kazuo Machida, Masaki Shioya, and Yoshio Masukawa 4:00 pmCoffee Break 4:15pmSession II S2206: Actionable Knowledge Discovery for Threats Intelligence Support using a Multi- Dimensional Data Mining Methodology, by Olivier Thonnard and Marc Dacier DM422: One-class Classification of Text Streams with Concept Drift, by Xue Li and Yang Zhang DM830: Post-Processing of Discovered Association Rules using Ontologies, by Claudia Marinica, Fabrice Guillet, and Henri Briand S2212: Behavior Informatics and Analytics: A New and Promising Area, by Longbing Cao DM424: TransRank: A Novel Algorithm for Transfer of Rank Learning, by Depin Chen, Jun Yan, Gang Wang, and Weiguo Fan DM698: Scoring Models for Insurance Risk Sharing Pool Optimization, by Nicolas Chapados, Charles Dugas, Pascal Vincent, and Rejean Ducharme