|
Course Catalog 2013-2014
SGN-42006 Machine Learning, 5 cr |
Additional information
Lectures in English or in Finnish.
Suitable for postgraduate studies
Person responsible
Ari Visa
Lessons
Study type | P1 | P2 | P3 | P4 | Summer | Implementations | Lecture times and places |
|
|
|
|
|
|
|
|
Requirements
Final exam, attendance at the classroom exercises and assignment.
Completion parts must belong to the same implementation
Principles and baselines related to teaching and learning
-
Learning Outcomes
Learning outcomes: The student can describe the difference artificial intelligence and machine learning. The student can list the mentioned learning rules. The student can describe them and is capable to apply them to train neural networks. The student is capable to list to analyse the lectured neural networks (MLP,SVM,SOM and recurrent networks). The student is capable to analyse the own problem and to select the most suitable, lectured neural network. The student has a certain capability to create new solutions based on the lectured material.
Content
Content | Core content | Complementary knowledge | Specialist knowledge |
1. | Learning processes | ||
2. | Learning machines with a teacher | Multilayer Perceptrons Radial-Basis Function Networks Support Vector Machines Committee Machines | |
3. | Learning machines without a teacher | Principal Component Analysis with Neural Networks Self-Organizig Maps Boltzmann Machine | |
4. | Nonlinear dynamical systems | Temporal Processing Using Feed Forward Network Dynamically Driven Recurrent Network |
Instructions for students on how to achieve the learning outcomes
Exam and approx. 70% attendance at the exercises.
Assessment scale:
Numerical evaluation scale (1-5) will be used on the course
Partial passing:
Study material
Type | Name | Author | ISBN | URL | Edition, availability, ... | Examination material | Language |
Book | "Neural Networks: a Comprehensive Foundation" | Haykin, S. | 2nd edition, Prentice-Hall Inc, 1999 | Yes | English |
Prerequisites
Course | Mandatory/Advisable | Description |
SGN-11000 Signaalinkäsittelyn perusteet | Advisable | 1 |
SGN-11006 Basic Course in Signal Processing | Advisable | 1 |
SGN-13000 Johdatus hahmontunnistukseen ja koneoppimiseen | Advisable | 2 |
SGN-13006 Introduction to Pattern Recognition and Machine Learning | Advisable | 2 |
1 . SGN-11000 tai SGN-11006
2 . SGN-13000 tai SGN-13006
Prerequisite relations (Requires logging in to POP)
Correspondence of content
Course | Corresponds course | Description |
|
|
More precise information per implementation
Implementation | Description | Methods of instruction | Implementation |
Learning outcomes: The student can describe the difference artificial intelligence and machine learning. The student can list the mentioned learning rules. The student can describe them and is capable to apply them to train neural networks. The student is capable to list to analyse the lectured neural networks (MLP,SVM,SOM and recurrent networks). The student is capable to analyse the own problem and to select the most suitable, lectured neural network. The student has a certain capability to create new solutions based on the lectured material. |