Many of our customers have utilized the Intent feedback analyzer to continuously improve their NLU models with tremendous success. However, at Cognigy, we are regularly asked about a more systematic approach to Intent training in projects.
So, we created a comprehenisve tutorial to present a systematic technique that can be employed during the project planning process.
Visit our Help Center Article to delve deep into a systematic approach to Intent training.
In the article, you'll learn about the phases that can be used to outline the intent creation/training process:
Introduction
Improving Intent recognition
-
Machine learning
- Cognigy Script
Resolving Intent conflicts
-
Moving Example Sentences to the better-suited Intent
-
Moving Intents into a hierarchy
-
Merging multiple Intents into one
-
Outsourcing Intents to a separate Flow
-
Adjusting the NLU settings
Reducing false positives
-
Machine learning / Reject Intent
-
Adjusting the NLU settings