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TDM 2005 Workshop Program General Schedule 8:20 -- 8:30: Opening -- Sheng Ma, Tao Li and Charles Perng 8:30 -- 9:30: Invited Talk: From Time Series to Stream Mining -- Christos Faloutsos (Carnegie Mellon University) Session I: Time Series (I) 9:40-- 10:00: CoDOTS: secure outlier detection in distributed time series -- Josenildo Costa da Silva, Matthias Klusch (German Research Center for Artificial Intelligence) 10:00-- 10:20: Grouping Multivariate Time Series: A Case Study -- Tamraparni Dasu, Deborah F. Swayne, David Poole (AT&T Labs Research) 10:00--10:40: A Dissimilarity Measure for Comparing Subsets of Data: Application to Multivariate Time Series -- Matthew Otey, Srinivasan Parthasarathy (Ohio State University) 10:40-- 11:00: Break Session II: Pattern Discovery (I) 11:00--11:20: Topographical Proximity: Exploiting Domain Knowledge for Sequential Data Mining -- Ann Devitt, Joseph Duffin (Ericsson, Ireland) 11:20--11:40: Identifying Temporal Patterns and Key Players in Document Collections -- Benyah Shaparenko, Rich Caruana, Johannes Gehrke, Thorsten Joachims (Cornell Univeristy) 11:40--12:00: Predicting Protein Folding Structures by Means of a New Classification Approach -- Huy Pham, EVANGELOS Triantaphyllou (Louisiana State University) Session III: Data Streams (I) 12:00--12:20: Tracking the Lyapunov Exponent in data streams -- Raphael Ladysz, Daniel Barbara (George Mason University) 12:20--12:40: Computing Information Gain in Data Streams -- Alec Pawling, Nitesh Chawla, Amitabh Chaudhary (University of Notre Dame) 12:40-- 1:40: Lunch Break Session IV: Time Series (II) 1:40-- 2:00: An Empirical Study on Multistep-ahead Time Series Prediction -- Haibin Cheng, Pang-Ning Tan, Jing Gao, Scripps Jerry (Michigan State University) 2:00-- 2:20: A PCA-based Kernel for Kernel PCA on Multivariate Time Series -- Kiyoung Yang, Cyrus Shahabi (University of Southern California) 2:20-- 2:40: Fast similarity search of time series data using the Nystrom method -- Akira Hayashi (Hiroshima City University), Katsutoshi Nishizaki (NEC Fielding, LTd.), Nobuo Suematsu (Hiroshima City University) Session V: Data Streams (II) 2:40--3:00: Stream Mining for Network Management -- Kenichi Yoshida, Satoshi Katsuno, SHIGEHIRO ANO, KATSUYUKI Yamazaki, Masato Tsuru (University of Tsukuba & KDDIR&D Laboratories Inc.& Kyushu Institute of Technology) 3:00--3:20: Incremental Maintenance of Wavelet Synopses for Data Streams -- Ken-Hao Liu, Wei-Guang Teng, Ming-Syan Chen (National Taiwan University) 3:20 --3:40: Break Session VI: Pattern Discovery (II) 3:40--4:00: Workflow Process Models: Discovering Decision Point Locations by Analyzing Data Dependencies -- Sharmila Subramaniam, Vana Kalogeraki, Dimitrios Gunopulos, Fabio Casati, Umeshwar Dayal, Mehmet Sayal, Malu Castellanos (University of California at Riverside & HP Labs) 4:00--4:20: Mining Spatio-Temporal Association Rules, Sources, Sinks, Stationary Regions and Thoroughfares in Object Mobility Databases -- Florian Verhein, Sanjay Chawla (University of Sydney, Australia) 4:20--4:40: Web Usage Mining: Extracting Unexpected Periods from Web Logs -- Florent MASSEGLIA, Pascal PONCELET, Maguelonne TEISSEIRE, Alice MARASCU (INRIA Sophia Antipolis) 4:40--5:00: Finding Temporal Association Rules between Frequent Patterns in Multivariate Time Series -- Giridhar Tatavarty, Raj Bhatnagar (University of Cincinnati) 5:00--5:20: Temporal Data Mining Based on Temporal Abstractions -- Robert Moskovitch, Yuval Shahar (Ben Gurion University, Israel) 5:20--5:40: Workshop Closing