Difference between revisions of "IJCNN 2009"
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|Title=International Joint Conference on Neural Networks | |Title=International Joint Conference on Neural Networks | ||
|Series=IJCNN | |Series=IJCNN | ||
− | | | + | |Event type=Conference |
|Field=Machine learning | |Field=Machine learning | ||
|Start date=2009/06/14 | |Start date=2009/06/14 |
Latest revision as of 11:01, 8 March 2021
IJCNN 2009 | |
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International Joint Conference on Neural Networks
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Event in series | IJCNN |
Dates | 2009/06/14 (iCal) - 2009/06/19 |
Homepage: | ijcnn2009.com |
Location | |
Location: | Atlanta, Georgia, USA |
Important dates | |
Submissions: | 2008/12/15 |
Notification: | 2009/01/30 |
Camera ready due: | 2009/03/10 |
Table of Contents | |
IJCNN is the premier international conference in the area of neural networks theory, analysis and applications. Topics of interest include but are not restricted to:
- Connectionist methods in cognitive science and cognitive modeling (language, reasoning,perception, learning, consciousness,emotion, etc.)
- Computational neuroscience
- Neuro-technologies and neuro-engineering,brain-machine interfaces
- Cognitive robotics, developmental robotics and neural robotics
- Data mining and pattern recognition
- Signal processing and time series analysis
- Image processing and machine vision
- Neurocontrol
- Neuroinformatics and bioinformatics
- Hybrid neural-symbolic, neuro-fuzzy,neuro-evolutionary systems, neuro-swarm, neural dynamic logic and other methods
- Connectionist methods of emergent intelligence
- Bayesian models and statistical machine learning methods
- Support vector machines and Kernel methods
- Learning methods: supervised, unsupervised and reinforcement
- Adaptive dynamic programming and neurodynamic optimization
- Neural dynamics, complex systems, and chaos
- Hardware implementations of neural networks, neuromorphic engineering
- Intelligent tools and methods (expert systems, embedded systems, data mining, multi-agent systems)
- Real world applications of neural networks (games, finance, social systems, biomedical, power systems, telecommunication,defense, manufacturing)