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Hands-On Transfer Learning with Python

You're reading from  Hands-On Transfer Learning with Python

Product type Book
Published in Aug 2018
Publisher Packt
ISBN-13 9781788831307
Pages 438 pages
Edition 1st Edition
Languages
Authors (4):
Dipanjan Sarkar Dipanjan Sarkar
Profile icon Dipanjan Sarkar
Nitin Panwar Nitin Panwar
Profile icon Nitin Panwar
Raghav Bali Raghav Bali
Profile icon Raghav Bali
Tamoghna Ghosh Tamoghna Ghosh
Profile icon Tamoghna Ghosh
View More author details
Toc

Table of Contents (14) Chapters close

Preface 1. Machine Learning Fundamentals 2. Deep Learning Essentials 3. Understanding Deep Learning Architectures 4. Transfer Learning Fundamentals 5. Unleashing the Power of Transfer Learning 6. Image Recognition and Classification 7. Text Document Categorization 8. Audio Event Identification and Classification 9. DeepDream 10. Style Transfer 11. Automated Image Caption Generator 12. Image Colorization 13. Other Books You May Enjoy

Transfer learning strategies

Let's start by first looking at a formal definition for transfer learning and then utilize it to understand different strategies. In their paper, A Survey on Transfer Learning (https://www.cse.ust.hk/~qyang/Docs/2009/tkde_transfer_learning.pdf), Pan and Yang use domain, task, and marginal probabilities to present a framework for understanding transfer learning. The framework is defined as follows:

A domain, D, is defined as a two-element tuple consisting of feature space, , and marginal probability, P(Χ), where Χ is a sample data point.

Here, Χ = {x1, x2....xn} with xi as a specific vector and Χ . Thus:

A task, T, on the other hand, can be defined as a two-element tuple of the label space, γ, and objective function, f. The objective function can also be denoted as P(γ| Χ) from a probabilistic view point...

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