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Advanced Transfer Learning with Deep Neural Networks

7,5 credits

The course covers the following topics:


Introduction: why deep learning with multiple tasks matters

Transfer learning via fine-tuning and domain adaptation

Multi-task learning

  • with fixed neural network architectures
  • with task-aware modulation

    Meta-learning for few-shot classification and regression
  • Black-box meta-learning methods
  • Optimization-based meta-learning methods
  • Non-parametric methods for few-shot learning

    Advanced topics
  • The problem of memorization in meta-learning
  • Meta-learning without tasks provided: how to construct training tasks automatically
  • Life-long learning: how to learn continuously from a sequence of tasks

    Open Challenges in multi-task and meta learning

Autumn 2024 (Distance (Internet), Varied, 75%)

Level:

Graduate level

Application code:

R3110

Entry requirements:

Basic eligibility for education at the postgraduate level (third-cycle) as well as 7,5 credits within machine learning.

Selection rules:

Restricted admission

Start week:

week: 38

Number of gatherings:

0

Instructional time:

Various times

Language of instruction:

Teaching is in English.

Show education info
Spring 2024 (Distance (Internet), Varied, 50%)

Level:

Graduate level

Application code:

R3010

Entry requirements:

Basic eligibility for education at the postgraduate level (third-cycle) as well as 7,5 credits within machine learning.

Selection rules:

Restricted admission

Start week:

week: 03

Number of gatherings:

0

Instructional time:

Various times

Language of instruction:

Teaching is in English.

Show education info

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