Skip to content

TRDim/Machine-Learning-

Repository files navigation

MACHINE LEARNING

(1st Semester Course of the MSc Data Science and Machine Learning from the NTUA)

https://dsml.ece.ntua.gr/

Professors

• Stefanos Kollias (http://www.image.ece.ntua.gr/lab/stefanos/)

• Andreas-Georgios Stafylopatis (https://www.ece.ntua.gr/en/staff/34)

• Georgios Siolas (https://www.ece.ntua.gr/en/staff/116)

• Georgios Alexandridis (https://www.ece.ntua.gr/gr/staff/358)

• Paraskevi Tzouveli (http://www.image.ntua.gr/~tpar/)

Description

The course covers topics from the area of neural networks and other techniques from the broader area of ​​computational intelligence, such as fuzzy systems, genetic algorithms and hybrid approaches: Neural network models and architectures, learning procedures, dynamic behavior, convergence and stability. Feedforward networks and learning through error correction (multi-layer perceptron, back-propagation algorithm), associative networks (Hopfield, BAM), recurrent multi-layer networks, competitive learning networks (Kohonen maps, ART models), local learning rules (RBF networks) support vector machines, combinations of neural networks (ensembles). Applications (pattern recognition, signal/image processing, control and robotics, diagnosis, prediction, optimization). Implementations (parallelism, VLSI). Hybrid systems (fuzzy neural systems, evolutionary neural networks).

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published