OpenCompass/configs/datasets/SuperGLUE_WSC/SuperGLUE_WSC_ppl_1c4a90.py

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from opencompass.openicl.icl_prompt_template import PromptTemplate
from opencompass.openicl.icl_retriever import ZeroRetriever
from opencompass.openicl.icl_inferencer import PPLInferencer
from opencompass.openicl.icl_evaluator import AccEvaluator
from opencompass.datasets import WSCDataset_V3
WSC_reader_cfg = dict(
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input_columns=['span1', 'span2', 'text'],
output_column='label',
)
WSC_infer_cfg = dict(
prompt_template=dict(
type=PromptTemplate,
template={
'A':
dict(round=[
dict(
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role='HUMAN',
prompt='Passage: {text}\nDoes the pronoun # {span2} # refer to * {span1} *?\nA. Yes\nB. No\nAnswer: '
),
dict(role='BOT', prompt='A'),
]),
'B':
dict(round=[
dict(
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role='HUMAN',
prompt='Passage: {text}\nDoes the pronoun # {span2} # refer to * {span1} *?\nA. Yes\nB. No\nAnswer: '
),
dict(role='BOT', prompt='B'),
]),
},
),
retriever=dict(type=ZeroRetriever),
inferencer=dict(type=PPLInferencer),
)
WSC_eval_cfg = dict(evaluator=dict(type=AccEvaluator), )
WSC_datasets = [
dict(
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abbr='WSC',
type=WSCDataset_V3,
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path='./data/SuperGLUE/WSC/val.jsonl',
reader_cfg=WSC_reader_cfg,
infer_cfg=WSC_infer_cfg,
eval_cfg=WSC_eval_cfg,
)
]