Lecture: Semi-supervised and Unsupervised Learning

Lecture: Semi-supervised and Unsupervised Learning

Administrative information


Title

Semi-supervised and Unsupervised Learning
Duration 45 - 60
Module C
Lesson Type Lecture
Focus Technical - Future AI
Topic Advances in ML models through a HC lens - A result Oriented Study  

 

Keywords


supervised,unsupervised,semi-supervised,self-supervised learning,

 

Learning Goals


  • Understand the supervised and unsupervised learning methods
  • Be able to distinguish between semi-supervised learning and self-supervised learning

 

Expected Preparation


Lesson materials


The materials of this learning event are available under CC BY-NC-SA 4.0.

 

Instructions for Teachers


The goal of this lecture is to focus on the learning techniques that allow us to build models in the absence of labelled training data. In other words, building systems that learn more like humans. The lecture should focus on new approaches in semi-supervised and self-supervised learning techniques that reduce or remove the requirement for labelled data sets. The lecture should:

  • Summarise supervised and unsupervised machine learning models and their limitations
  • Explain the concepts behind semi-supervised learning and give some examples
  • Explain the concepts behind self-supervised learning and give some examples
  • Identify and describe suitable application areas and problem types for semi-supervised and self-supervised learning

 

Outline


Duration Description Concepts Activity Material
10 min Review of supervised and unsupervised learning Labelled data, unlabelled data, classificaiton, clustering, dimensionality reduction, limitations and problems (cost of labelling data) Taught session and examples Lecture materials
10 min Semi-supervised learning Definition of semi-supervised learning (learning with limited labelled data), self-training model, pseudo-labelling, confidence levels, co-training, graph based label propagation Taught session and examples Lecture materials
10 min Self-supervised learning Definition of self-supervised learning (learning without labelled data), pre-text task, down-stream task, contrastive learning Taught session and examples Lecture materials
10 min Use cases and application areas Semi-supervised learning (labelling audio, web content classification, text document classification), Self-supervised learning (patch localisation, content-aware pixel predication, next sentence predication, Auto-regressive language modelling, hate-speech detection) Taught session and examples Lecture materials
5 min Conclusion, questions and answers Summary Conclusions Lecture materials

 

More information

Click here for an overview of all lesson plans of the master human centred AI

Please visit the home page of the consortium HCAIM

Acknowledgements

The Human-Centered AI Masters programme was co-financed by the Connecting Europe Facility of the European Union Under Grant №CEF-TC-2020-1 Digital Skills 2020-EU-IA-0068.

The materials of this learning event are available under CC BY-NC-SA 4.0

 

The HCAIM consortium consists of three excellence centres, three SMEs and four Universities

HCAIM Consortium

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2024-02-14 22:38:52
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HCAIM Consortium. (z.d.).

Acknowledgement

https://maken.wikiwijs.nl/198386/Acknowledgement

HCAIM Consortium. (z.d.).

Lecture: Model Compression - Edge Computing

https://maken.wikiwijs.nl/202202/Lecture__Model_Compression___Edge_Computing

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