A Rasa NLU component for composite entities.
See also my blog post.
Comptabile with Rasa 2.X, does not work with Rasa 3.X.
- 2021-01-13: Updated for Rasa 2.x. Removed old data loading logic, the only way to load patterns is now through an external JSON file. Renamed extractor in the results from "composite" to "CompositeEntityExtractor".
- 2020-02-26: Entities are now being sorted by their
start
value before being processed. This prevents problems with other entity extractors like the duckling extractor which might change the entity order. - 2020-01-10: The sub-entities contained in a composite entity are now found under a key named
value
instead ofcontained_entities
. This change makes the output of the composite entity extractor consistent with other extractors. The major version has been bumped to mark this as a breaking change.
$ pip install rasa_composite_entities
The only external dependency is Rasa NLU itself, which should be installed anyway when you want to use this component.
After installation, the component can be added your pipeline like any other component:
language: en
pipeline:
- name: SpacyNLP
- name: SpacyTokenizer
- name: SpacyFeaturizer
- name: DIETClassifier
epochs: 10
- name: EntitySynonymMapper
- name: rasa_composite_entities.CompositeEntityExtractor
Create a JSON file containing the following example structure:
{
"composite_entities": [
{
"name": "product_with_attributes",
"patterns": [
"@color @product with @pattern",
"@pattern @color @product"
]
}
]
}
You can then specify the path to this variable in you pipeline like this:
language: en
pipeline:
- name: SpacyNLP
- name: SpacyTokenizer
- name: SpacyFeaturizer
- name: DIETClassifier
epochs: 10
- name: EntitySynonymMapper
- name: rasa_composite_entities.CompositeEntityExtractor
composite_patterns_path: composite_entity_patterns.json
Using a separate file for composite entity patterns is necessary, as rasa strips extra fields from training files. In the future, this component might use a custom data importer to allow giving composite patterns directly in the training data file.
Every word starting with a "@" will be considered a placeholder for an entity with that name. The component is agnostic to the origin of entities, you can use anything that Rasa NLU returns as the "entity" field in its messages. This means that you can not only use the entities defined in your common examples, but also numerical entities from duckling etc.
Longer patterns always take precedence over shorter patterns. If a shorter pattern matches entities that would also be matched by a longer pattern, the shorter pattern is ignored.
Patterns are regular expressions! You can use patterns like
"composite_entities": [
{
"name": "product_with_attributes",
"patterns": [
"(?:@pattern\\s+)?(?:@color\\s+)?@product(?:\\s+with @[A-Z,a-z]+)?"
]
}
]
to match different variations of entity combinations. Be aware that you may need to properly escape your regexes to produce valid JSON files (in case of this example, you have to escape the backslashes with another backslash).
Composite entities act as containers that group several entities into logical units. Consider the following example phrase:
I am looking for a red shirt with stripes and checkered blue shoes.
Properly trained, Rasa NLU could return entities like this:
"entities": [
{
"entity": "color",
"start": 19,
"end": 22,
"confidence_entity": 0.4838929772,
"value": "red",
"extractor": "DIETClassifier"
},
{
"entity": "product",
"start": 23,
"end": 28,
"confidence_entity": 0.5812809467,
"value": "shirt",
"extractor": "DIETClassifier"
},
{
"entity": "pattern",
"start": 34,
"end": 41,
"confidence_entity": 0.7823174,
"value": "striped",
"extractor": "DIETClassifier",
"processors": [
"EntitySynonymMapper"
]
},
{
"entity": "pattern",
"start": 46,
"end": 55,
"confidence_entity": 0.8026408553,
"value": "checkered",
"extractor": "DIETClassifier"
},
{
"entity": "color",
"start": 56,
"end": 60,
"confidence_entity": 0.5482532978,
"value": "blue",
"extractor": "DIETClassifier"
},
{
"entity": "product",
"start": 61,
"end": 66,
"confidence_entity": 0.712133944,
"value": "shoe",
"extractor": "DIETClassifier",
"processors": [
"EntitySynonymMapper"
]
}
]
It's hard to infer exactly what the user is looking for from this output alone. Is he looking for a striped and checkered shirt? Striped and checkered shoes? Or a striped shirt and checkered shoes?
By defining common patterns of entity combinations, we can automatically create entity groups. If we add the composite entity patterns as in the usage example above, the output will be changed to this:
"entities": [
{
"start": 19,
"end": 41,
"confidence": 1.0,
"entity": "product_with_attributes",
"extractor": "CompositeEntityExtractor",
"value": [
{
"entity": "color",
"start": 19,
"end": 22,
"confidence_entity": 0.8646154404,
"value": "red",
"extractor": "DIETClassifier"
},
{
"entity": "product",
"start": 23,
"end": 28,
"confidence_entity": 0.5739765763,
"value": "shirt",
"extractor": "DIETClassifier"
},
{
"entity": "pattern",
"start": 34,
"end": 41,
"confidence_entity": 0.6623272896,
"value": "striped",
"extractor": "DIETClassifier",
"processors": [
"EntitySynonymMapper"
]
}
]
},
{
"start": 46,
"end": 66,
"confidence": 1.0,
"entity": "product_with_attributes",
"extractor": "CompositeEntityExtractor",
"value": [
{
"entity": "pattern",
"start": 46,
"end": 55,
"confidence_entity": 0.699033916,
"value": "checkered",
"extractor": "DIETClassifier"
},
{
"entity": "color",
"start": 56,
"end": 60,
"confidence_entity": 0.8599796891,
"value": "blue",
"extractor": "DIETClassifier"
},
{
"entity": "product",
"start": 61,
"end": 66,
"confidence_entity": 0.494287014,
"value": "shoe",
"extractor": "DIETClassifier",
"processors": [
"EntitySynonymMapper"
]
}
]
}
]
See the example
folder for a minimal example that can be trained and tested.
To get the output from above, run:
$ cd example
$ rasa train nlu --out . --nlu train.yml --config config.yml
$ rasa run --enable-api --model .
$ curl -XPOST localhost:5005/model/parse -d '{"text": "I am looking for a red shirt with stripes and checkered blue shoes"}'
If you want to compare this output to the normal Rasa NLU output, just remove the definition of the composite extractor in the config file and train again.
This project is licensed under the MIT License - see the LICENSE.md file for details.