Challenge: Acronyms are short forms of phrases that facilitate conveying lengthy sentences in documents.
Approach: They propose to annotate a large dataset for scientific domain and a new deep learning model which expands an ambiguous acronym in a sentence.
Outcome: The proposed model outperforms the state-of-the-art models on the new dataset.

Similar Papers

GLADIS: A General and Large Acronym Disambiguation Benchmark (2023.eacl-main)

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Challenge: Existing acronym disambiguation benchmarks are limited to specific domains . a study on a Microsoft question answering forum found that only 7% of acronyms co-occur with their corresponding long forms, which confuses the readers about the meaning of a text.
Approach: They propose a new acronym disambiguation benchmark with a dictionary and a pre-training corpus . they then pre-train a language model on the constructed corpus and show the challenges .
Outcome: The proposed benchmarks pre-train a language model on the constructed corpus for general acronym disambiguation.
Guess Me if You Can: Acronym Disambiguation for Enterprises (P18-1)

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Challenge: Acronyms are abbreviations formed from the initial components of words or phrases . acronyms can be difficult to understand for people who are not familiar with the subject matter .
Approach: They propose a framework to automatically resolve the true meanings of acronyms in a given context . they use the enterprise corpus as input and a high-quality acronym disambiguation system as output .
Outcome: The proposed framework can be deployed to any enterprise to support acronym disambiguation.
MadDog: A Web-based System for Acronym Identification and Disambiguation (2021.eacl-demos)

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Challenge: Acronyms and abbreviations are the short-form of longer phrases and are frequently used in writing but they can also present challenges for newcomers.
Approach: They propose to develop a web-based acronym identification and disambiguation system which can process acronyms from various domains including scientific, biomedical, and general domains.
Outcome: The proposed system can process acronyms from scientific, biomedical, and general domains.
Abbreviation Expander - a Web-based System for Easy Reading of Technical Documents (C18-2)

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Challenge: Existing abbreviation expansion systems or tools require technical knowledge to set up . existing systems require strong assumptions and are limited in their usefulness .
Approach: They propose a web-based system that automatically expands abbreviations and acronyms in a user provided document.
Outcome: The proposed system expands abbreviations and acronyms automatically in a user provided document.
MACRONYM: A Large-Scale Dataset for Multilingual and Multi-Domain Acronym Extraction (2022.coling-1)

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Challenge: Acronym extraction is the task of identifying acronyms and their expanded forms in texts . existing AE methods for English are limited to specific languages and domains .
Approach: They propose to annotate 27,200 sentences in 6 different languages and 2 new domains for AE.
Outcome: The proposed dataset shows that AE in different languages and learning settings has unique challenges .
Experiments with ad hoc ambiguous abbreviation expansion (D19-62)

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Challenge: ad hoc abbreviations are difficult to interpret for patients and nonspecialists.
Approach: They propose to use morphologically annotated medical notes to expand ad hoc abbreviations without using additional domain resources.
Outcome: The proposed methods outperform the previously proposed methods on Polish data but can be used for other languages.
Character-level Language Models for Abbreviation and Long-form Detection (2024.lrec-main)

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Challenge: Abbreviations and long forms are textual elements that are present in scientific communication . non-recognition of abbreviation and long form can lead to a negative impact on information retrieval .
Approach: They propose to train and test language models for automatically identifying abbreviations and long forms . they use existing datasets annotated with abbrevations and their associated long forms to test them .
Outcome: The proposed model can detect abbreviations and long forms on biomedical data . the proposed model improves on a previously untested dataset with biomedically-annotated datasets .
A Chinese Dataset with Negative Full Forms for General Abbreviation Prediction (L18-1)

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Challenge: a common phenomenon across languages is abbreviation, but it's not always possible to predict it accurately.
Approach: They build a dataset for general Chinese abbreviation prediction using a negative full form . they find that abbrevation prediction can improve the performance of abbreviation recognition .
Outcome: The proposed dataset evaluates models on abbreviation prediction in Chinese . it shows that abbrevation prediction improves performance in language processing tasks .
A Laypeople Study on Terminology Identification across Domains and Task Definitions (N18-2)

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Challenge: Existing studies on term annotation show that even experts differ in their understanding of termhood .
Approach: They propose a new dataset of term annotation that examines the common understanding of what constitutes a term.
Outcome: The proposed datasets show that even experts differ in their understanding of termhood . the findings suggest that there is a common understanding of what constitutes a term .
PLOD: An Abbreviation Detection Dataset for Scientific Documents (2022.lrec-1)

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Challenge: Existing datasets for abbreviation detection and extraction are limited.
Approach: They propose to use a large-scale dataset for abbreviation detection and extraction that contains 160k+ segments automatically annotated with abbrevian and long forms.
Outcome: The proposed dataset has an F1 score of 0.92 for abbreviations and 0.89 for detecting their corresponding long forms.

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