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Conversational AI with Rasa

You're reading from   Conversational AI with Rasa Build, test, and deploy AI-powered, enterprise-grade virtual assistants and chatbots

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Product type Paperback
Published in Oct 2021
Publisher Packt
ISBN-13 9781801077057
Length 264 pages
Edition 1st Edition
Tools
Concepts
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Authors (2):
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Xiaoquan Kong Xiaoquan Kong
Author Profile Icon Xiaoquan Kong
Xiaoquan Kong
Guan Wang Guan Wang
Author Profile Icon Guan Wang
Guan Wang
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Toc

Table of Contents (16) Chapters Close

Preface 1. Section 1: The Rasa Framework
2. Chapter 1: Introduction to Chatbots and the Rasa Framework FREE CHAPTER 3. Chapter 2: Natural Language Understanding in Rasa 4. Chapter 3: Rasa Core 5. Section 2: Rasa in Action
6. Chapter 4: Handling Business Logic 7. Chapter 5: Working with Response Selector to Handle Chitchat and FAQs 8. Chapter 6: Knowledge Base Actions to Handle Question Answering 9. Chapter 7: Entity Roles and Groups for Complex Named Entity Recognition 10. Chapter 8: Working Principles and Customization of Rasa 11. Section 3: Best Practices
12. Chapter 9: Testing and Production Deployment 13. Chapter 10: Conversation-Driven Development and Interactive Learning 14. Chapter 11: Debugging, Optimization, and Community Ecosystem 15. Other Books You May Enjoy

The fallback mechanism in Rasa

In real life, there will always be situations that chatbots cannot handle. For example, the user input voice is not clear enough, or the requested service is beyond what the system can offer. Then we need a fallback operation to handle those exceptions so that we can still elegantly reply to users with something like Sorry, I could not understand what you meant. Categorized by triggering cause, fallbacks can be NLU fallback or policy fallback.

Now, let's start with NLU fallback.

Handling fallback in NLU

NLU fallback is used to handle situations where the NLU module cannot clearly understand what user's intent is. The FallbackClassifier component is used for this purpose, and its configuration example is as follows:

pipeline:
  - name: FallbackClassifier
    threshold: 0.6
    ambiguity_threshold: 0.1

Here, if the confidence of the intent with the highest score is equal to or lower...

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