Matches in SemOpenAlex for { <https://semopenalex.org/work/W4300539570> ?p ?o ?g. }
Showing items 1 to 71 of
71
with 100 items per page.
- W4300539570 abstract "Requirements engineering (RE) is a critical set of activities in the software development life cycle (SDLC). Without effective requirements elicitation, organization, communication, and understanding software engineers cannot build quality soft-ware. Thus, it is necessary for software stakeholders to facilitate the SDLC by following best practices and utilizing software tools as needed to ensure requirements are well understood. One area where RE still faces issues, despite stakeholders' best efforts, is the communication of requirements amongst the various stakeholders. Software stakeholders consist of the customers, developers, managers, end users, and others with a vested interest in the software, and they typically all have different skillsets, backgrounds, vernaculars, and understanding of the requirements. These differences naturally lead to miscommunications which can lead to redundant, missing, or conflicting requirements, especially when customer and end user domains include complex vocabularies developers may not be accustomed to, and vice versa, e.g., biology, physics, and medicine. One approach in recent works to address this challenge has been to bridge the communication gap between stakeholders by constructing domain-specific ontologies using natural language processing (NLP) and Wikipedia [1]. With these ontologies, stakeholders have a convenient tool they can use to translate and understand specific requirements in the terminologies they're accustomed to. These techniques have shown promising potential, however there are computational challenges associated with efficiently handling a large dataset like Wikipedia. In particular, parsing internal links from Wikipedia article metadata can be a bottleneck in such ontology-construction systems. In this work we address this issue by implementing a program for memory-efficient parallel internal link extraction from Wikipedia articles. This builds on the work of Rodriguez et al. [2] by optimizing additional phases in the knowledge acquisition process." @default.
- W4300539570 created "2022-10-03" @default.
- W4300539570 creator A5035657915 @default.
- W4300539570 creator A5077167825 @default.
- W4300539570 date "2022-06-01" @default.
- W4300539570 modified "2023-09-27" @default.
- W4300539570 title "Efficient Parallel Wikipedia Internal Link Extraction for NLP-Assisted Requirements Understanding" @default.
- W4300539570 cites W1910238460 @default.
- W4300539570 cites W2810504826 @default.
- W4300539570 cites W2974135360 @default.
- W4300539570 doi "https://doi.org/10.1109/compsac54236.2022.00077" @default.
- W4300539570 hasPublicationYear "2022" @default.
- W4300539570 type Work @default.
- W4300539570 citedByCount "0" @default.
- W4300539570 crossrefType "proceedings-article" @default.
- W4300539570 hasAuthorship W4300539570A5035657915 @default.
- W4300539570 hasAuthorship W4300539570A5077167825 @default.
- W4300539570 hasConcept C102780508 @default.
- W4300539570 hasConcept C111472728 @default.
- W4300539570 hasConcept C115903868 @default.
- W4300539570 hasConcept C120617098 @default.
- W4300539570 hasConcept C136764020 @default.
- W4300539570 hasConcept C138885662 @default.
- W4300539570 hasConcept C174683762 @default.
- W4300539570 hasConcept C180152950 @default.
- W4300539570 hasConcept C199360897 @default.
- W4300539570 hasConcept C2522767166 @default.
- W4300539570 hasConcept C25810664 @default.
- W4300539570 hasConcept C2777904410 @default.
- W4300539570 hasConcept C41008148 @default.
- W4300539570 hasConcept C45384764 @default.
- W4300539570 hasConcept C52913732 @default.
- W4300539570 hasConcept C529173508 @default.
- W4300539570 hasConcept C54534927 @default.
- W4300539570 hasConcept C6604083 @default.
- W4300539570 hasConcept C93518851 @default.
- W4300539570 hasConceptScore W4300539570C102780508 @default.
- W4300539570 hasConceptScore W4300539570C111472728 @default.
- W4300539570 hasConceptScore W4300539570C115903868 @default.
- W4300539570 hasConceptScore W4300539570C120617098 @default.
- W4300539570 hasConceptScore W4300539570C136764020 @default.
- W4300539570 hasConceptScore W4300539570C138885662 @default.
- W4300539570 hasConceptScore W4300539570C174683762 @default.
- W4300539570 hasConceptScore W4300539570C180152950 @default.
- W4300539570 hasConceptScore W4300539570C199360897 @default.
- W4300539570 hasConceptScore W4300539570C2522767166 @default.
- W4300539570 hasConceptScore W4300539570C25810664 @default.
- W4300539570 hasConceptScore W4300539570C2777904410 @default.
- W4300539570 hasConceptScore W4300539570C41008148 @default.
- W4300539570 hasConceptScore W4300539570C45384764 @default.
- W4300539570 hasConceptScore W4300539570C52913732 @default.
- W4300539570 hasConceptScore W4300539570C529173508 @default.
- W4300539570 hasConceptScore W4300539570C54534927 @default.
- W4300539570 hasConceptScore W4300539570C6604083 @default.
- W4300539570 hasConceptScore W4300539570C93518851 @default.
- W4300539570 hasLocation W43005395701 @default.
- W4300539570 hasOpenAccess W4300539570 @default.
- W4300539570 hasPrimaryLocation W43005395701 @default.
- W4300539570 hasRelatedWork W2028561093 @default.
- W4300539570 hasRelatedWork W2105242771 @default.
- W4300539570 hasRelatedWork W2158451926 @default.
- W4300539570 hasRelatedWork W2946096078 @default.
- W4300539570 hasRelatedWork W2954163627 @default.
- W4300539570 hasRelatedWork W4205481046 @default.
- W4300539570 hasRelatedWork W4224921875 @default.
- W4300539570 hasRelatedWork W4230736421 @default.
- W4300539570 hasRelatedWork W4304208313 @default.
- W4300539570 hasRelatedWork W65984945 @default.
- W4300539570 isParatext "false" @default.
- W4300539570 isRetracted "false" @default.
- W4300539570 workType "article" @default.