The Third International Workshop

Mining Multiple Information Sources

In conjunction with the IEEE International Conference on Data Mining (ICDM 2009)

December 6 2009, Miami, USA


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Workshop Papers

All papers are listed in their original submission order. Only the first authors’ affiliation was listed

 

Solving a prisoner’s dilemma in distributed anomaly detection

Aleksandar Lazarevic, Nisheeth Srivastava, Ashutosh Tewari, Josh Isom, Nikunj Oza, and Jadeep Srivastava

University of Minnesota, USA [The first author’s affiliation]

 

Hybrid Clustering by Integrating Text and Citation based Graphs in Journal Database Analysis

Xinhai Liu, Shi Yu, Wolfgang Glänzel, Frizo Janssens, and Bart De Moor

Katholieke Universiteit Leuven, Belgium

 

Mining for Core Patterns in Stock Market Data

Jianfei Wu, Anne Denton, Omar Omar Elariss, and Dianxiang Xu

North Dakota State University, USA

 

LNBC : A Link-Based Naive Bayes Classifier

Bahareh Bina, Oliver Schulte, and Hassan Khosravi

1.                              Simon Fraser University, Canada

 

Efficient Discovery of Closed Hyperclique Patterns in Multidimensional Structured Databases

Tomonobu Ozaki and Takenao Ohkawa

Kobe University, Japan

 

Frequent Pattern Discovery from a Single Graph with Quantitative Itemsets

Yuuki Miyoshi, Tomonobu Ozaki, and Takenao Ohkawa

Kobe University, Japan

 

Improving Similarity Join Algorithm Using Fuzzy Clustering Techniques

Lisa Tan, Farshad Fotouhi, William Grosky, Horia F. Pop, and Noureddine Mouaddib

Wayne State University, USA

 

Mining Multiple Satellite Sensor Data Using Collaborative Clustering

Germain Forestier, Cédric Wemmert, and Pierre Gancarski

University of Strasbourg, France

 

TagLearner: A P2P Classifier Learning System from Collaboratively Tagged Text Documents

Haimonti Dutta, Xianshu Zhu, Tushar Muhale, Hillol Kargupta, Kirk Borne, Codrina Lauth, Florian Holz, and Gerherd Heyer

Columbia University, USA

 

Feature Selection with High-Dimensional Imbalanced Data

Jason Van Hulse, Taghi Khoshgoftaar, Amri Napolitano, and Randall Wald

Florida Atlantic University, USA

 

Mining Data from Multiple Software Development Projects

Huanjing Wang, Taghi M. Khoshgoftaar, Kehan Gao, and Naeem Seliya

1.                              Western Kentucky University, USA

 

Bucket Learning: Improving Model Quality through Enhancing Local Patterns

Guangzhi Qu

Oakland University, USA