SciNLI: A Corpus for Natural Language Inference on Scientific Text (2022.acl-long)
Copied to clipboard
| Challenge: | Existing Natural Language Inference (NLI) datasets are not related to scientific text. |
| Approach: | They propose a large dataset for NLI that captures the formality in scientific text and contains 107,412 sentence pairs extracted from scholarly papers on NLP and computational linguistics. |
| Outcome: | The proposed model achieves a Macro F1 score of only 78.18% and an accuracy of 78.23%. |
Similar Papers
DocNLI: A Large-scale Dataset for Document-level Natural Language Inference (2021.findings-acl)
Copied to clipboard
| Challenge: | Existing studies focus on sentence-level inference, which limits its application in downstream NLP problems. |
| Approach: | They propose to construct a large-scale dataset for document-level NLI that can be used to study NLP problems. |
| Outcome: | The proposed model performs well on popular sentence-level benchmarks and generalizes well to out-of-domain NLP tasks that rely on inference at document granularity. |
MSciNLI: A Diverse Benchmark for Scientific Natural Language Inference (2024.naacl-long)
Copied to clipboard
| Challenge: | a dataset containing 132,320 sentence pairs from five new scientific domains is used for scientific Natural Language Inference (NLI) the availability of multiple domains makes it possible to study domain shift for scientific NLI. |
| Approach: | They propose a dataset with 132,320 sentence pairs from five new scientific domains to introduce diversity in scientific NLI. |
| Outcome: | The proposed dataset contains 132,320 sentence pairs extracted from five new scientific domains. |
Pushing the Frontiers of Scientific Fact-Checking: The SCINLP Dataset (2026.findings-eacl)
Copied to clipboard
| Challenge: | Large Language Models (LLMs) are increasingly being used to understand how scientific research evolves, drawing growing interest from the research community. |
| Approach: | They propose a scientific fact-checking dataset, SCINLP, tailored to the NLP domain that verifies the veracity of scientific research questions across varying rationale contexts. |
| Outcome: | The proposed framework examines scientific claims and research focus from a curated collection of influential and reputable NLP papers published between 2000 and 2024. |
A Broad-Coverage Challenge Corpus for Sentence Understanding through Inference (N18-1)
Copied to clipboard
| Challenge: | et al., 1996, show that many of the most actively studied problems in NLP depend in large part on natural language understanding (NLU). |
| Approach: | They propose a dataset for machine learning that uses ten different genres of English to evaluate sentences for their meanings. |
| Outcome: | The multi-genre natural language inference corpus is one of the largest available for natural language understanding. |
SciNLP: A Domain-Specific Benchmark for Full-Text Scientific Entity and Relation Extraction in NLP (2025.emnlp-main)
Copied to clipboard
| Challenge: | Existing datasets for structured information extraction focus on specific publication sections due to domain complexity and high cost of annotating scientific texts. |
| Approach: | They propose a specialized benchmark for full-text entity and relation extraction in the natural language processing domain. |
| Outcome: | The proposed dataset comprises 60 manually annotated full-text NLP publications covering 7,072 entities and 1,826 relations. |
XNLI: Evaluating Cross-lingual Sentence Representations (D18-1)
Copied to clipboard
Alexis Conneau, Ruty Rinott, Guillaume Lample, Adina Williams, Samuel Bowman, Holger Schwenk, Veselin Stoyanov
| Challenge: | State-of-the-art natural language processing systems rely on annotated data to learn competent models. |
| Approach: | They extend the development and test sets of the Multi-Genre Natural Language Inference Corpus to 14 languages, including Swahili and Urdu. |
| Outcome: | The proposed evaluation set extends the development and test sets of the Multi-Genre Natural Language Inference Corpus (MultiNLI) to 14 languages including low-resource languages such as Swahili and Urdu. |
A MISMATCHED Benchmark for Scientific Natural Language Inference (2025.findings-acl)
Copied to clipboard
| Challenge: | Existing datasets for scientific NLI are derived from various computer science domains, whereas non-CS domains are completely ignored. |
| Approach: | They propose a scientific natural language inference benchmark called MisMatched that incorporates sentence pairs having an implicit scientific NLI relation into model training. |
| Outcome: | The proposed benchmark covers three non-CS domains and contains 2,700 human annotated sentence pairs. |
OCNLI: Original Chinese Natural Language Inference (2020.findings-emnlp)
Copied to clipboard
| Challenge: | Recent efforts to extend natural language understanding to other languages have focused on (automatically) translating existing English datasets. |
| Approach: | They propose to use a Chinese dataset to generate annotated sentences from native speakers specializing in linguistics to elicit annotations. |
| Outcome: | The proposed dataset does not rely on automatic translation or non-expert annotation. instead, it elicits annotations from native speakers specializing in linguistics. |
IndoNLI: A Natural Language Inference Dataset for Indonesian (2021.emnlp-main)
Copied to clipboard
| Challenge: | XLM-R model outperforms other pre-trained models in annotated data. |
| Approach: | They adapt the data collection protocol for MNLI and collect 18K sentence pairs annotated by crowd workers and experts. |
| Outcome: | The proposed dataset outperforms other pre-trained models on the expert-annotated data. |
Deep Learning for Natural Language Inference (N19-5)
Copied to clipboard
| Challenge: | This tutorial discusses cutting-edge research on NLI, including recent advance on dataset development, cutting- edge deep learning models, and highlights from recent research on using NLI to understand capabilities and limits of deep learning for language understanding and reasoning. |
| Approach: | This tutorial discusses cutting-edge research on NLI, including recent advance on dataset development and cutting- edge deep learning models. |
| Outcome: | This tutorial discusses cutting-edge research on NLI, including recent advance on dataset development, cutting- edge deep learning models, and highlights from recent research on using NLI to understand capabilities and limits of deep learning model for language understanding and reasoning. |