Book Image

Conversational AI with Rasa

By : Xiaoquan Kong, Guan Wang
Book Image

Conversational AI with Rasa

By: Xiaoquan Kong, Guan Wang

Overview of this book

The Rasa framework enables developers to create industrial-strength chatbots using state-of-the-art natural language processing (NLP) and machine learning technologies quickly, all in open source. Conversational AI with Rasa starts by showing you how the two main components at the heart of Rasa work – Rasa NLU (natural language understanding) and Rasa Core. You'll then learn how to build, configure, train, and serve different types of chatbots from scratch by using the Rasa ecosystem. As you advance, you'll use form-based dialogue management, work with the response selector for chitchat and FAQ-like dialogs, make use of knowledge base actions to answer questions for dynamic queries, and much more. Furthermore, you'll understand how to customize the Rasa framework, use conversation-driven development patterns and tools to develop chatbots, explore what your bot can do, and easily fix any mistakes it makes by using interactive learning. Finally, you'll get to grips with deploying the Rasa system to a production environment with high performance and high scalability and cover best practices for building an efficient and robust chat system. By the end of this book, you'll be able to build and deploy your own chatbots using Rasa, addressing the common pain points encountered in the chatbot life cycle.
Table of Contents (16 chapters)
1
Section 1: The Rasa Framework
5
Section 2: Rasa in Action
11
Section 3: Best Practices

Chapter 7: Entity Roles and Groups for Complex Named Entity Recognition

In Chapter 2, Natural Language Understanding in Rasa, we introduced how to carry out Named Entity Recognition (NER) in Rasa. NER extracts the entity type and the entity value from a piece of text. Unfortunately, for complex NER, we require more information than simply the entity type and the entity value. In this chapter, we will introduce the entity roles and entity groups for dealing with complex NER problems. The entity role can be used to distinguish the different semantic roles of entities (that have the same entity type). In comparison, the entity group can be used to group entities into different groups, where each grouped entity belongs to different subtasks in the same request.

In this chapter, you will learn how entity roles and entity groups can be used to solve the complex NER problem. Additionally, you will learn how to define training data, configure pipelines, and write stories for entity roles...