数据集:
definite_pronoun_resolution
任务:
标记分类语言:
en计算机处理:
monolingual大小:
1K<n<10K语言创建人:
crowdsourced批注创建人:
expert-generated源数据集:
original许可:
license:unknownComposed by 30 students from one of the author's undergraduate classes. These sentence pairs cover topics ranging from real events (e.g., Iran's plan to attack the Saudi ambassador to the U.S.) to events/characters in movies (e.g., Batman) and purely imaginary situations, largely reflecting the pop culture as perceived by the American kids born in the early 90s. Each annotated example spans four lines: the first line contains the sentence, the second line contains the target pronoun, the third line contains the two candidate antecedents, and the fourth line contains the correct antecedent. If the target pronoun appears more than once in the sentence, its first occurrence is the one to be resolved.
An example of 'train' looks as follows.
{ "candidates": ["coreference resolution", "chunking"], "label": 0, "pronoun": "it", "sentence": "There is currently more work on coreference resolution than on chunking because it is a problem that is still far from being solved." }
The data fields are the same among all splits.
plain_textname | train | test |
---|---|---|
plain_text | 1322 | 564 |
@inproceedings{rahman2012resolving, title={Resolving complex cases of definite pronouns: the winograd schema challenge}, author={Rahman, Altaf and Ng, Vincent}, booktitle={Proceedings of the 2012 Joint Conference on Empirical Methods in Natural Language Processing and Computational Natural Language Learning}, pages={777--789}, year={2012}, organization={Association for Computational Linguistics} }
Thanks to @thomwolf , @lewtun , @patrickvonplaten for adding this dataset.