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Neuro-Symbolic AI

You're reading from   Neuro-Symbolic AI Design transparent and trustworthy systems that understand the world as you do

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Product type Paperback
Published in May 2023
Publisher Packt
ISBN-13 9781804617625
Length 196 pages
Edition 1st Edition
Concepts
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Authors (2):
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Alexiei Dingli Alexiei Dingli
Author Profile Icon Alexiei Dingli
Alexiei Dingli
David Farrugia David Farrugia
Author Profile Icon David Farrugia
David Farrugia
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Toc

Table of Contents (12) Chapters Close

Preface 1. Chapter 1: The Evolution and Pitfalls of AI 2. Chapter 2: The Rise and Fall of Symbolic AI FREE CHAPTER 3. Chapter 3: The Neural Networks Revolution 4. Chapter 4: The Need for Explainable AI 5. Chapter 5: Introducing Neuro-Symbolic AI – the Next Level of AI 6. Chapter 6: A Marriage of Neurons and Symbols – Opportunities and Obstacles 7. Chapter 7: Applications of Neuro-Symbolic AI 8. Chapter 8: Neuro-Symbolic Programming in Python 9. Chapter 9: The Future of AI 10. Index 11. Other Books You May Enjoy

Summary

We started this chapter by discussing the thought process behind developing an NSAI solution based on the powerful technique of LTNs. Then, we saw how LTNs combine symbolic rules and NNs to learn the relationships between the different logical conditions and their variables (i.e., the knowledge base). Thanks to the powerful LTNtorch package, we demonstrated how to quickly build an LTN system for a binary classification task. For example, we used the publicly available Red and White Wine Dataset. We showed the power and benefits of NSAI (specifically, LTNs) in training performance. Our LTN system reached high predictive power much quicker when compared to other public experiments on the same dataset.

In this chapter, we also discussed a more straightforward approach to NSAI. In this example, we directly combined a DT (as the symbolic AI component) and an NN as a stacking classifier. We showed how we can exploit the logic extraction capabilities of the DT to further understand...

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