Challenge: SciDMT is an enhanced and expanded corpus for scientific mention detection . existing corpora are limited by their small volume and entity linking capabilities .
Approach: They propose to enhance SciDMT, an annotated scientific corpus for scientific mention detection.
Outcome: The proposed corpus is the largest for scientific entity mention detection . it is based on deep learning architectures like SciBERT and GPT-3.5 .

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DMDD: A Large-Scale Dataset for Dataset Mentions Detection (2023.tacl-1)

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Challenge: Existing corpora for dataset mention detection are limited in size and naming diversity.
Approach: They propose a dataset for dataset mention detection that is the largest publicly available corpus for this task.
Outcome: The proposed dataset is the largest publicly available corpus for dataset mention detection . it identifies open problems in dataset mention recognition and linking .
SciDTB: Discourse Dependency TreeBank for Scientific Abstracts (P18-2)

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Challenge: Discourse relations are annotated on scientific articles.
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A Multi-level Annotated Corpus of Scientific Papers for Scientific Document Summarization and Cross-document Relation Discovery (2020.lrec-1)

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Challenge: Recent studies have proposed to take advantage of the scientific paper's citation network to approach literature summarization.
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Outcome: The proposed corpus expands the existing data-set of related work sections and cites the papers cited in the related work section.
CiteWorth: Cite-Worthiness Detection for Improved Scientific Document Understanding (2021.findings-acl)

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Challenge: Scientific document understanding is challenging due to the highly domain specific nature of scientific language.
Approach: They propose a large, contextualized, rigorously cleaned labelled dataset for cite-worthiness detection built from extracted scientific documents.
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SciNLP: A Domain-Specific Benchmark for Full-Text Scientific Entity and Relation Extraction in NLP (2025.emnlp-main)

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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.
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Pushing the Frontiers of Scientific Fact-Checking: The SCINLP Dataset (2026.findings-eacl)

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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.
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TDMSci: A Specialized Corpus for Scientific Literature Entity Tagging of Tasks Datasets and Metrics (2021.eacl-main)

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Challenge: Recent efforts to extract tasks, datasets and evaluation metrics from scientific literature focus on abstracts only.
Approach: They propose a corpus that contains domain expert annotations for Task (T), Dataset (D), Metric (M) entities extracted from NLP papers.
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SciNLI: A Corpus for Natural Language Inference on Scientific Text (2022.acl-long)

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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.
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SciER: An Entity and Relation Extraction Dataset for Datasets, Methods, and Tasks in Scientific Documents (2024.emnlp-main)

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Challenge: Scientific information extraction (SciIE) is critical for converting unstructured knowledge from scholarly articles into structured data.
Approach: They propose to use a scientific entity and relation extraction dataset to capture interactions between entities in full texts.
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ProGene - A Large-scale, High-Quality Protein-Gene Annotated Benchmark Corpus (2020.lrec-1)

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Challenge: Genes and proteins are fundamental entities of molecular genetics and are important for precision medicine.
Approach: They propose to use a corpus of gene and protein names to cope with this class of named entities in a large-scale annotation campaign at the Jena University Language & Information Engineering lab.
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