Datasets:
language:
- en
pretty_name: CANNOT
Dataset Card for CANNOT
Dataset Description
- Homepage: https://github.com/dmlls/cannot-dataset
- Repository: https://github.com/dmlls/cannot-dataset
- Paper: tba
Dataset Summary
CANNOT is a dataset that focuses on negated textual pairs. It currently contains 77,376 samples, of which roughly of them are negated pairs of sentences, and the other half are not (they are paraphrased versions of each other).
The most frequent negation that appears in the dataset is verbal negation (e.g., will → won't), although it also contains pairs with antonyms (cold → hot).
Languages
CANNOT includes exclusively texts in English.
Dataset Structure
The dataset is given as a
.tsv
file with the
following structure:
premise | hypothesis | label |
---|---|---|
A sentence. | An equivalent, non-negated sentence (paraphrased). | 0 |
A sentence. | The sentence negated. | 1 |
The dataset can be easily loaded into a Pandas DataFrame by running:
import pandas as pd
dataset = pd.read_csv('negation_dataset_v1.0.tsv', sep='\t')
Dataset Creation
The dataset has been created by cleaning up and merging the following datasets:
Not another Negation Benchmark: The NaN-NLI Test Suite for Sub-clausal Negation (see
datasets/nan-nli
).GLUE Diagnostic Dataset (see
datasets/glue-diagnostic
).Automated Fact-Checking of Claims from Wikipedia (see
datasets/wikifactcheck-english
).From Group to Individual Labels Using Deep Features (see
datasets/sentiment-labelled-sentences
). In this case, the negated sentences were obtained by using the Python modulenegate
.
Additionally, for each of the negated samples, another pair of non-negated
sentences has been added by paraphrasing them with the pre-trained model
🤗tuner007/pegasus_paraphrase
.
Furthermore, the dataset from It Is Not Easy To Detect Paraphrases: Analysing
Semantic Similarity With Antonyms and Negation Using the New SemAntoNeg
Benchmark (see
datasets/antonym-substitution
)
has also been included. This dataset already provides both the paraphrased and
negated version for each premise, so no further processing was needed.
Finally, the swapped version of each pair (premise ⇋ hypothesis) has also been included, and any duplicates have been removed.
The contribution of each of these individual datasets to the final CANNOT dataset is:
Dataset | Samples |
---|---|
Not another Negation Benchmark | 118 |
GLUE Diagnostic Dataset | 154 |
Automated Fact-Checking of Claims from Wikipedia | 14,970 |
From Group to Individual Labels Using Deep Features | 2,110 |
It Is Not Easy To Detect Paraphrases | 8,597 |
Total |
25,949 |
Note: The numbers above include only the original queries present in the datasets.
Additional Information
Licensing Information
TODO
Citation Information
tba
Contributions
Contributions to the dataset can be submitted through the project repository.