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Mastering spaCy

You're reading from   Mastering spaCy An end-to-end practical guide to implementing NLP applications using the Python ecosystem

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Product type Paperback
Published in Jul 2021
Publisher Packt
ISBN-13 9781800563353
Length 356 pages
Edition 1st Edition
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Author (1):
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Duygu Altınok Duygu Altınok
Author Profile Icon Duygu Altınok
Duygu Altınok
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Table of Contents (15) Chapters Close

Preface 1. Section 1: Getting Started with spaCy
2. Chapter 1: Getting Started with spaCy FREE CHAPTER 3. Chapter 2: Core Operations with spaCy 4. Section 2: spaCy Features
5. Chapter 3: Linguistic Features 6. Chapter 4: Rule-Based Matching 7. Chapter 5: Working with Word Vectors and Semantic Similarity 8. Chapter 6: Putting Everything Together: Semantic Parsing with spaCy 9. Section 3: Machine Learning with spaCy
10. Chapter 7: Customizing spaCy Models 11. Chapter 8: Text Classification with spaCy 12. Chapter 9: spaCy and Transformers 13. Chapter 10: Putting Everything Together: Designing Your Chatbot with spaCy 14. Other Books You May Enjoy

Summary

That's it! You made it to the end of this exhaustive chapter and also to the end of this book!

In this chapter, we designed an end-to-end chatbot NLU pipeline. As a first task, we explored our dataset. By doing this, we collected linguistic information about the utterances and understood the slot types and their corresponding values. Then, we performed a significant task of chatbot NLU, entity extraction. We extracted several types of entities such as city, date/time, and cuisine with the spaCy NER model as well as Matcher. Then, we performed another traditional chatbot NLU pipeline task – intent recognition. We trained a character-level LSTM model with TensorFlow and Keras.

In the last section, we dived into sentence-level and dialog-level semantics. We worked on sentence syntax by differentiating subjects from objects, then learned about sentence types and finally learned about the linguistic concept of anaphora resolution. We applied what we learned in...

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