Approach 1 - multi-intents
You can use multi-intents (not to be confused with multi-entities). What you need to do is:
- Write example nlu data for the intent separately (what you already have)
- Write nlu data for the multi-intents combinations. In theory, Rasa will use both the information from both the single intent and multi-intent examples to correctly categorize. This means that you do not need that many training examples in the multi-intent
- Write some stories that deal with these multi-intents
- Specify a separator in the tokenizer configuration:
Please note that you need to have both NLU data for the multi-intents you want to support and stories, otherwise Rasa won't recognize them in the NLU and won't do anything in the Core.
This could give you something like this:
# intent:show transactions
- please show me my latest transactions
- show me my transactions
# intent:pay bill
- pay my bill please
- i want to pay my bill
- go ahead and pay the bills
# intent:show transactions+pay bill
- Show my latest transactions and then pay my bill after showing the balance.
- show me my transactions and go ahead and pay the bills
Note that you could write a script to automatically generate a few examples of multi-intents from the single intents
# story 1
* show transactions
# story 2
* pay bill
# story 3 (combined)
* show transactions+pay bill
- name: "WhitespaceTokenizer"
- name: "CountVectorsFeaturizer"
- name: "EmbeddingIntentClassifier"
Please note that I'm using a different split symbol than the one in the documentation.
Approach 2 - instructions as entities
Another approach is to use a single intent
ask_action and one or more entities that identifies your instructions.
You can then have an action
action_execute_instructions that deals with all of them. It would look at the entities from the latest message, and execute whatever you need.
How you understand the instructions will strongly depend on how you chose to define the entities and how you manage to map them to the instruction you want. There is the
SynonymMapper for that but it is not flexible at all and will fail if you have a new example that does not exactly match. You're better off writing your own NLU pipeline component in that case.
To be honest, I don't think this is a good approach. Entities should rather be, well, entities (ie: objects, locations, etc.)
- [Show my latest transactions](instruction) and then [pay my bill](instruction) after showing the balance.
- [show me my transactions](instruction) and go ahead and [pay the bills](instruction)
- [pay the bill](instruction)
# story 1
I would strongly recommend using the simplest approach. Once you have your bot live, you should review how your users use it and see if a more complex combination of intent (if you do multi-intents) is needed.