- From: jgama <jgama@liacc.up.pt>
- Date: Mon, 14 Jun 2004 14:14:30 +0100
- To: Undisclosed-Recipient: ;
******************************************************************* Deadline Extended First International Workshop on Knowledge Discovery in Data Streams 24 September 2004, Pisa, Italy http://www.lsi.us.es/~aguilar/ecml2004/ NEW SUBMISSION DEADLINE: June 21, 2004 ******************************************************************* in conjunction with ECML/PKDD 2004: The 15th European Conference on Machine Learning (ECML) and The 8th European Conference on Principles and Practice of Knowledge Discovery in Databases (PKDD), http://ecmlpkdd.isti.cnr.it/ MOTIVATION Databases are growing incessantly and many sources produce data continuously. In many cases, we need to extract some sort of knowledge from this continuous stream of data. Examples include customer click streams, telephone records, large sets of web pages, multimedia data, scientific data, and sets of retail chain transactions. These sources are called data streams. The goal of this workshop is to convene researchers who deal with decision rules, decision trees, association rules, clustering, filtering, preprocessing, post processing, feature selection, visualization techniques, etc. from data streams and related themes. We are looking for all possible contributions related to inductive learning from data streams. The goal of this workshop is to convene researchers who deal with decision rules, decision trees, association rules, clustering, filtering,preprocessing, post processing, feature selection, visualization techniques, etc. from data streams and related themes. Research works presenting theoretical results, basic research, perspective solutions and practical developments are welcome, provided that they address the topic of the workshop. Position papers are also welcome and encouraged. Topics of Interest Topics include (but are not restricted to): * Data Stream Models * Clustering from Data Streams * Decision Trees from Data Streams * Association Rules from Data Streams * Decision Rules from Data Streams * Feature Selection from Data Streams * Visualization Techniques for Data Streams * Incremental on-line Learning Algorithms * Mining spatio-temporal data streams * Scalable Algorithms * Real-Time Applications * Real-World Applications Important Dates Submission deadline: June 21, 2004 Notification of acceptance: July 12, 2004 Camera-ready copies due: July 26, 2004
Received on Monday, 14 June 2004 09:14:35 UTC