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<p>(Apologize if you receive multiple copies of this message.)<br>
<br>
Call for Papers <br>
<br>
Special Session on "Multi-objective Machine Learning"<br>
2006 International Joint Conference on Neural Networks (part of WCCI'06)<br>
July 16-21, Vancouver, Canada<br>
<a href="http://www.wcci2006.org/">http://www.wcci2006.org/</a> <br>
<br>
Organized by Yaochu Jin (yaochu.jin@honda-ri.de)<br>
URL: <a href="http://www.soft-computing.de/CFP_SS_MOML.html">http://www.soft-computing.de/CFP_SS_MOML.html</a><br>
<b><font size="4" color="#FF0000">The submission deadline has been extended to February 15, 2006</font></b><font size="4"> </font><br>
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Motivation and Scope:<br>
<br>
Machine learning usually has to achieve multiple targets, which are often conflicting with each other. <br>
For example in feature selection, minimizing the number of features and the maximizing feature <br>
quality are two conflicting objectives. It is also well realized that model selection has to deal with <br>
the trade-off between model complexity and approximation or classification accuracy. <br>
Traditional learning algorithms attempt to deal with multiple objectives by combining them into a<br>
scalar cost function so that multi-objective machine learning problems are reduced to single-objective <br>
problems. <br>
<br>
Recently, increasing interest has been shown in applying Pareto-based multi-objective optimization <br>
to machine learning, particularly inspired by the successful developments in evolutionary multi-objective <br>
optimization. It has been shown that the multi-objective approach to machine learning is particularly successful <br>
in 1) improving the performance of the traditional single-objective machine learning <br>
methods 2) generating highly diverse multiple Pareto-optimal models for constructing ensembles and, <br>
3) in achieving a desired trade-off between accuracy and interpretability of neural networks or fuzzy systems.<br>
<br>
This proposed special session intends to further promote research interests in multi-objective machine learning<br>
by presenting the most recent research results and discussing the main challenges in this area. Topics include<br>
but are not limited to <br>
<br>
* multi-objective clustering, feature extraction and feature selection <br>
* multi-objective model selection to improve the performance of learning models, such as neural networks, <br>
support vector machines, decision trees, and fuzzy systems<br>
* multi-objective model selection to improve the interpretability of learning models, e.g., to extract <br>
symbolic rules from neural networks, or to improve the interpretability of fuzzy systems<br>
* multi-objective generation of learning ensembles<br>
* multi-objective learning to deal with tradeoffs between plasticity and stability, long-term and short-term <br>
memories, specialization and generalization<br>
* multi-objective machine learning applications <br>
<br>
Submission:<br>
<br>
All special session papers must be submitted no later than January 31, 2005 through the conference <br>
webpage at <a href="http://139.78.75.247/WCCI-Web_paper_submit.html">http://139.78.75.247/WCCI-Web_paper_submit.html</a>. <b><font size="4" color="#FF0000">Please choose "S.Special Sessions, </font></b><br>
<b><font size="4" color="#FF0000">Sa: Multi-objective machine learning" as your main research topic</font></b></body></html>
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archive@iubio.bio.indiana.edu