数据集:
metaeval/autotnli
https://github.com/Dibyakanti/AutoTNLI-code
@inproceedings{kumar-etal-2022-autotnli, title = "Realistic Data Augmentation Framework for Enhancing Tabular Reasoning", author = "Kumar, Dibyakanti and Gupta, Vivek and Sharma, Soumya and Zhang, Shuo", booktitle = "Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing", month = dec, year = "2022", address = "Online and Abu Dhabi", publisher = "Association for Computational Linguistics", url = "https://vgupta123.github.io/docs/autotnli.pdf", pages = "", abstract = "Existing approaches to constructing training data for Natural Language Inference (NLI) tasks, such as for semi-structured table reasoning, are either via crowdsourcing or fully automatic methods. However, the former is expensive and time-consuming and thus limits scale, and the latter often produces naive examples that may lack complex reasoning. This paper develops a realistic semi-automated framework for data augmentation for tabular inference. Instead of manually generating a hypothesis for each table, our methodology generates hypothesis templates transferable to similar tables. In addition, our framework entails the creation of rational counterfactual tables based on human written logical constraints and premise paraphrasing. For our case study, we use the InfoTabS (Gupta et al., 2020), which is an entity-centric tabular inference dataset. We observed that our framework could generate human-like tabular inference examples, which could benefit training data augmentation, especially in the scenario with limited supervision.", }对以上内容翻译成中文,不要翻译大写的英文, 保留标签以及所有属性,按照此约束返回翻译后的中文。
https://github.com/Dibyakanti/AutoTNLI-code
@inproceedings{kumar-etal-2022-autotnli, title = "Realistic Data Augmentation Framework for Enhancing Tabular Reasoning", author = "Kumar, Dibyakanti and Gupta, Vivek and Sharma, Soumya and Zhang, Shuo", booktitle = "Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing", month = dec, year = "2022", address = "Online and Abu Dhabi", publisher = "Association for Computational Linguistics", url = "https://vgupta123.github.io/docs/autotnli.pdf", pages = "", abstract = "Existing approaches to constructing training data for Natural Language Inference (NLI) tasks, such as for semi-structured table reasoning, are either via crowdsourcing or fully automatic methods. However, the former is expensive and time-consuming and thus limits scale, and the latter often produces naive examples that may lack complex reasoning. This paper develops a realistic semi-automated framework for data augmentation for tabular inference. Instead of manually generating a hypothesis for each table, our methodology generates hypothesis templates transferable to similar tables. In addition, our framework entails the creation of rational counterfactual tables based on human written logical constraints and premise paraphrasing. For our case study, we use the InfoTabS (Gupta et al., 2020), which is an entity-centric tabular inference dataset. We observed that our framework could generate human-like tabular inference examples, which could benefit training data augmentation, especially in the scenario with limited supervision.", }对以上内容翻译成中文,不要翻译大写的英文,保留标签以及所有属性,按照此约束返回翻译后的中文。