Challenge: Gene Ontology (GO) terms are used to describe gene function in biology and bio-medicine.
Approach: They propose a task to generate term names for GO and build a large-scale benchmark dataset.
Outcome: The proposed model outperforms baselines by incorporating the relations between genes, words and terms for term name generation.

Similar Papers

Graphine: A Dataset for Graph-aware Terminology Definition Generation (2021.emnlp-main)

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Challenge: Lack of large-scale terminology definition dataset hinders definition generation . lack of precise terminology definitions poses great challenges in scientific communication .
Approach: They propose a large-scale terminology definition dataset Graphine that exploits the graph structure of terminologies to generate graph-aware text generation models.
Outcome: The proposed model outperforms existing models by exploiting graph structure of terminologies.
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 .
A Survey on LLMs for Story Generation (2025.findings-emnlp)

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Challenge: Methods for story generation with Large Language Models (LLMs) have come into the spotlight recently.
Approach: They propose a novel taxonomy of LLMs for story generation consisting of two major paradigms: independent story generation by an LLM, and author-assistance for story creation .
Outcome: The proposed taxonomy compares existing work on the topic with those of novel author-assistance models.
Generating Scientific Definitions with Controllable Complexity (2022.acl-long)

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Challenge: Unfamiliar terminology and complex language can make understanding science difficult for readers.
Approach: They propose a task and dataset for defining scientific terms and controlling the complexity of generated definitions by a sequence-to-sequence approach.
Outcome: The proposed system is based on a sequence-to-sequence approach and human evaluations show it offers superior fluency while controlling complexity.
Profiling Medical Journal Articles Using a Gene Ontology Semantic Tagger (L18-1)

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Challenge: a growing number of scientific publications are based on sub-divisions and sub-communities of expertise becoming disconnected from each other.
Approach: They propose to examine corpora derived from bodies of genetics literature and use it to make comparisons and improve retrieval methods.
Outcome: The proposed methods will help to make comparisons and improve retrieval methods using domain knowledge via an existing gene ontology.
GenWiki: A Dataset of 1.3 Million Content-Sharing Text and Graphs for Unsupervised Graph-to-Text Generation (2020.coling-main)

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Challenge: a large-scale, general-domain dataset is needed for knowledge graph-to-text generation . data collection is expensive and data-intensive, making it difficult to get good annotation .
Approach: They propose to use a large-scale, general-domain dataset to generate unsupervised text from knowledge graphs.
Outcome: The proposed dataset has 1.3M text and graph examples, and is a benchmark for future research . good annotation is expensive and difficult to get, and it's difficult to check quality .
Meaning Representations for Natural Languages: Design, Models and Applications (2024.lrec-tutorials)

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Challenge: a tutorial reviews the design of common meaning representations and SoTA models for predicting meaning representation.
Approach: This tutorial reviews the design of common meaning representations and SoTA models for predicting meaning representation. authors propose a cutting-edge, full-day tutorial for all stakeholders in the AI community.
Outcome: This tutorial reviews the design of common meaning representations and SoTA models for predicting meaning representation models . it also reviews the applications of meaning representation in downstream NLP tasks and real-world applications .
Automatic Annotation of Semantic Term Types in the Complete ACL Anthology Reference Corpus (L18-1)

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Challenge: a recent increase in quantitative studies of scientific text collections has led to a significant increase in the use of semantic labeling techniques.
Approach: They propose to use semantic class labels to enhance a well-known resource . they use semantic labels to assign semantic class labeling to technical terms .
Outcome: The proposed approach enhances the ACL Anthology Reference Corpus with semantic class labels for 20,000 technical terms . the goal is to use this information as one feature in the profiling of scientific papers, communities, and disciplines.
A Generate-and-Rank Framework with Semantic Type Regularization for Biomedical Concept Normalization (2020.acl-main)

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Challenge: Concept normalization is a task that maps textual mentions of concepts to concepts in an ontology . lexical and grammatical variations are pervasive in such text, posing key challenges for data interoperability and the development of natural language processing (NLP) techniques.
Approach: They propose a concept normalization framework that uses a candidate generator and a list-wise ranker to link concept mentions to concepts in an ontology.
Outcome: The proposed framework achieves state-of-the-art performance on multiple datasets.
Towards the Machine Translation of Scientific Neologisms (2025.coling-main)

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Challenge: Scientific research continually discovers and invents new concepts, which are then referred to by new terms, neologisms, or nenonyms.
Approach: They propose to leverage term definitions to translate neologisms with Large Language Models . they find that LLMs generate terms from co-hyponyms and terms sharing the same derivation paradigm .
Outcome: The proposed model can generate terms from co-hyponyms and terms sharing the same derivation paradigm.

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