π Single Sentiment ClassΒΆ
tasks.targeted_sentiment_extraction.single_sentiment_class
Task(
input_fields={
"text": "str",
"text_type": "str",
"sentiment_class": "str",
},
reference_fields={
"spans_starts": "List[int]",
"spans_ends": "List[int]",
"text": "List[str]",
"labels": "List[str]",
},
prediction_type="List[Tuple[str, str]]",
metrics=[
"metrics.ner",
],
augmentable_inputs=[
"text",
],
defaults={
"text_type": "text",
},
)
[source]Explanation about TaskΒΆ
Task packs the different instance fields into dictionaries by their roles in the task.
- Args:
- input_fields (Union[Dict[str, str], List[str]]):
Dictionary with string names of instance input fields and types of respective values. In case a list is passed, each type will be assumed to be Any.
- reference_fields (Union[Dict[str, str], List[str]]):
Dictionary with string names of instance output fields and types of respective values. In case a list is passed, each type will be assumed to be Any.
- metrics (List[str]):
List of names of metrics to be used in the task.
- prediction_type (Optional[str]):
Need to be consistent with all used metrics. Defaults to None, which means that it will be set to Any.
- defaults (Optional[Dict[str, Any]]):
An optional dictionary with default values for chosen input/output keys. Needs to be consistent with names and types provided in βinput_fieldsβ and/or βoutput_fieldsβ arguments. Will not overwrite values if already provided in a given instance.
- The output instance contains three fields:
βinput_fieldsβ whose value is a sub-dictionary of the input instance, consisting of all the fields listed in Arg βinput_fieldsβ.
βreference_fieldsβ β for the fields listed in Arg βreference_fieldsβ.
βmetricsβ β to contain the value of Arg βmetricsβ
References: metrics.ner
Read more about catalog usage here.