|
## QA4PC Dataset (paper: Cross-Policy Compliance Detection via Question Answering) |
|
|
|
|
|
### Train Sets |
|
To create training set or entailment and QA tasks, download and convert the ShARC data using the following commands: |
|
``` |
|
wget https://sharc-data.github.io/data/sharc1-official.zip |
|
unzip sharc1-official.zip |
|
python create_train_from_sharc.py -sharc_dev_path sharc1-official/json/sharc_dev.json -sharc_train_path sharc1-official/json/sharc_train.json |
|
``` |
|
|
|
### Evaluation Sets |
|
|
|
#### Entailment Data |
|
The following files contain the data for the entailment task. This includes the policy + questions, a scenario and an answer (_Yes, No, Maybe_). Each datapoint also contain the information from the ShARC dataset such as tree_id and source_url. |
|
- __dev_entailment_qa4pc.json__ |
|
- __test_entailment_qa4pc.json__ |
|
|
|
#### QA Data |
|
The following files contain the data for the QA task. |
|
- __dev_sc_qa4pc.json__ |
|
- __test_sc_qa4pc.json__ |
|
|
|
The following file contains the expression tree data for the dev and test sets. Each tree includes a policy, a set of questions and a logical expression. |
|
- __trees_dev_test_qa4pc.json__ |
|
|