Challenge: Recent studies have proposed to take advantage of the scientific paper's citation network to approach literature summarization.
Approach: They propose to annotate related work sections, cite papers and sentences using machine readable data and an additional layer of papers citing the references.
Outcome: The proposed corpus expands the existing data-set of related work sections and cites the papers cited in the related work section.

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Challenge: Abstract Meaning Representation (AMR) is limited to capturing the semantics of individual sentences.
Approach: They propose a corpus that annotates coreference and similar phenomena on top of existing AMRs.
Outcome: The proposed corpus is compared with existing corpora on sentence-level semantics . it shows that it can be used for information extraction and question answering .
Enhancing Scientific Document Summarization with Research Community Perspective and Background Knowledge (2024.lrec-main)

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Challenge: Scientific paper summarization is the focus of recent research . prevailing summarizing methods involve selective extraction of content from abstract, introduction, and conclusion segments within the target articles.
Approach: They propose a model that incorporates references and citations to capture the impact of the document on the research community.
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Capturing Relations between Scientific Papers: An Abstractive Model for Related Work Section Generation (2021.acl-long)

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Challenge: Existing related work generation models are inflexible and extract sentences from multiple papers to form a related work discussion.
Approach: They propose a Relation-aware Related work generator which generates an abstractive related work from the given multiple scientific papers in the same research area.
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Towards a Gold Standard Corpus for Variable Detection and Linking in Social Science Publications (L18-1)

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Challenge: a new corpus for detecting and linking survey variables is being developed . the corpus is multilingual and includes manually curated word and phrase alignments .
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Dataset Construction for Scientific-Document Writing Support by Extracting Related Work Section and Citations from PDF Papers (2022.lrec-1)

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Challenge: To augment datasets used for scientific-document writing support research, we extract texts from “Related Work” sections and citation information in PDF-formatted papers published in English.
Approach: They propose to extract text from “Related Work” sections and citation information from PDF-formatted papers published in English.
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Beyond Generic Summarization: A Multi-faceted Hierarchical Summarization Corpus of Large Heterogeneous Data (L18-1)

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Challenge: Automated summarization has focused on ten to twenty documents, typically news articles, but could in theory analyze hundreds of documents from a wide range of sources and provide an overview to the interested reader.
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A Corpus with Multi-Level Annotations of Patients, Interventions and Outcomes to Support Language Processing for Medical Literature (P18-1)

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Challenge: In 2015 alone, about 100 manuscripts describing randomized controlled trials for medical interventions were published every day.
Approach: They propose a corpus of 5,000 medical articles annotated with demarcations of text spans that describe the Patient population enrolled, the Interventions studied and to what they were Compared, and the Outcomes measured.
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A Gold Standard for Multilingual Automatic Term Extraction from Comparable Corpora: Term Structure and Translation Equivalents (L18-1)

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Challenge: Terms are notoriously difficult to identify, both automatically and manually.
Approach: They propose a method to annotate terms manually from a comparable corpus . they show that the gold standard provides a tool for evaluation and a rich source of information .
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Multi-XScience: A Large-scale Dataset for Extreme Multi-document Summarization of Scientific Articles (2020.emnlp-main)

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Challenge: Multi-XScience is a dataset construction protocol that favours abstractive modeling approaches.
Approach: They propose a large-scale multi-document summarization dataset that is based on articles and lexical databases and WordNet synonymy information to generate related-work sections of a paper.
Outcome: The proposed method is based on lexical databases and WordNet synonymy information to write related work sections of a paper based upon their abstract and the articles they reference.
Beyond Metadata: What Paper Authors Say About Corpora They Use (2021.findings-acl)

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Challenge: Currently, dataset retrieval relies almost exclusively on metadata provided by the publishers.
Approach: They propose to use metadata to extract review statements from scientific publications . they argue that a crucial piece of information is missing to inform the examination of search results .
Outcome: The proposed analysis is the first of its kind in the field of Natural Language Processing.

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