Neural Networks

Service description

Introduction to artificial neural networks (NS), NS logical neurons. The digital / analog Perceptron: the concept of learning with a teacher pattern recognition. Linear NS: vector spaces, auto associative memory. Multi-layer perceptron: the method of back propagation error, training and test set, generalization, selection of model validation. Hebb learning without a teacher, feature extraction, principal component analysis. Learning the competition, self-organizing map clustering, topographic display. Hybrid NS: radial-basis-function NS algorithm for training, properties. Recurrent NS: temporal structure in data, models and algorithms for training, echo state networks, recurrent self-organizing maps. Hopfield model: deterministic and stochastic dynamics, attractors in state space, auto associative memory. Deep architecture NS.

Type of methodology: Combination of lecture and hands-on

Participants receive the certificate of attendance: Yes

Paid training activity for participants: Yes, for all

Participants prerequisite knowledge: Numerical methods (linear algebra, statistics) Domain-specific background knowledge

 

Level
Potential users
Scientific Domain
Mathematics
Category
Training events
Service valid until
Audience
Research and Academia
Location category
Language
English
Technical Domain
Not Relevant
Format
In person
Initiative
Castiel and EuroCC
Country