IWANN2003: Topics
- Mathematical & Computational Methods in neural modeling.
Levels of analysis. Brain Theory. Neural coding. Mathematical Biophysics.
Population Dynamics and Statistical modeling. Diffusion processes.
Dynamical Binding. Synchronization. Resonance. Regulatory Mechanisms.
Cellular Automata.
- Neurophysiological data analysis and modeling.
Ionic channels. Synapses. Neurons. Circuits. Biophysical simulations.
- Structural and functional models of neurons.
Analogue, non-linear, recurrent, RBF, PCA, digital, probabilistic,
Bayesian, fuzzy and object oriented formulations.
- Learning and other plasticity phenomena.
Supervised, non-supervised, reinforcement and statistical algorithms.
Hybrid formulations. Incremental-decremental architectures. Biological
mechanisms of adaptation and plasticity. Development and maturing.
- Complex systems dynamics.
Statistical-mechanics. Attractors. Optimization, self-organization
and cooperative-competitive networks. Evolutionary and genetic algorithms.
- Cognitive Processes and Artificial Intelligence.
Perception (visual, auditive, tactile, proprioceptive). Multi-sensory
integration. Natural language. Memory. Decision Making. Planning.
Motor Control. Neuroethology. Knowledge modeling. Multi-agent systems.
Distributed AI. Social systems.
- Methodology for nets design, simulation and implementation.
Data analysis, task identification and recursive design. Development
environments and editing tools. Implementation. Evolving hardware.
- Bio-inspired systems and engineering.
Bio-cybernetics and Bionics. Signal processing, neural prostheses,
retinomorphic systems, and other neural adaptive prosthetic devices.
Molecular computing.
- Applications.
Artificial vision, speech recognition, spatio-temporal planning and
scheduling. Data mining. Sources separation. Applications of ANNs
in Robotics, Astrophysics, Economy, Internet, Medicine, Education
and Industry.