The application of machine learning in inner built environment: scientometric analysis, limitations, and future directions

IntroductionThis article investigates the revolutionary influence of artificial intelligence (AI) on interior design, with an emphasis on the incorporation of machine learning ML techniques. The advent of AI has resulted in a paradigm change in design methods, prompting a thorough review of research...

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Main Authors: Samah Al Dwiek, Safaa Al Bast
Format: Article
Language:English
Published: Frontiers Media S.A. 2024-11-01
Series:Frontiers in Built Environment
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fbuil.2024.1413153/full
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author Samah Al Dwiek
Safaa Al Bast
author_facet Samah Al Dwiek
Safaa Al Bast
author_sort Samah Al Dwiek
collection DOAJ
description IntroductionThis article investigates the revolutionary influence of artificial intelligence (AI) on interior design, with an emphasis on the incorporation of machine learning ML techniques. The advent of AI has resulted in a paradigm change in design methods, prompting a thorough review of research gaps and the potential for ML applications in a variety of areas of interior design.MethodsA systematic review process was implemented to fill these gaps, consisting of an in-depth evaluation of 28 research publications from Scopus databases categorized into eight themes. The investigation sought to address a pair of primary inquiries: what opportunities exist for using ML in interior design conditions, and what challenges limit its effective implementation.ResultThe study discovered a significant gap in the existing literature, demanding a full assessment to highlight challenges in ML implementation and the potential for applied ML development throughout the whole spectrum of interior design.DiscussionThe findings are intended to provide researchers and enthusiasts with an extensive understanding of ML-based gaps in interior design conditions and to provide various solutions for filling these gaps. This understanding may assist in the development of intelligent ML-driven apps, promoting interior contexts that improve user well-being and psychological comfort.
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spelling doaj-art-b580ec66604441fea50c8006711e84c32024-11-14T06:21:07ZengFrontiers Media S.A.Frontiers in Built Environment2297-33622024-11-011010.3389/fbuil.2024.14131531413153The application of machine learning in inner built environment: scientometric analysis, limitations, and future directionsSamah Al DwiekSafaa Al BastIntroductionThis article investigates the revolutionary influence of artificial intelligence (AI) on interior design, with an emphasis on the incorporation of machine learning ML techniques. The advent of AI has resulted in a paradigm change in design methods, prompting a thorough review of research gaps and the potential for ML applications in a variety of areas of interior design.MethodsA systematic review process was implemented to fill these gaps, consisting of an in-depth evaluation of 28 research publications from Scopus databases categorized into eight themes. The investigation sought to address a pair of primary inquiries: what opportunities exist for using ML in interior design conditions, and what challenges limit its effective implementation.ResultThe study discovered a significant gap in the existing literature, demanding a full assessment to highlight challenges in ML implementation and the potential for applied ML development throughout the whole spectrum of interior design.DiscussionThe findings are intended to provide researchers and enthusiasts with an extensive understanding of ML-based gaps in interior design conditions and to provide various solutions for filling these gaps. This understanding may assist in the development of intelligent ML-driven apps, promoting interior contexts that improve user well-being and psychological comfort.https://www.frontiersin.org/articles/10.3389/fbuil.2024.1413153/fullmachine learninginterior designartificial intelligenceinterior-environmentsmart technologysustainability
spellingShingle Samah Al Dwiek
Safaa Al Bast
The application of machine learning in inner built environment: scientometric analysis, limitations, and future directions
Frontiers in Built Environment
machine learning
interior design
artificial intelligence
interior-environment
smart technology
sustainability
title The application of machine learning in inner built environment: scientometric analysis, limitations, and future directions
title_full The application of machine learning in inner built environment: scientometric analysis, limitations, and future directions
title_fullStr The application of machine learning in inner built environment: scientometric analysis, limitations, and future directions
title_full_unstemmed The application of machine learning in inner built environment: scientometric analysis, limitations, and future directions
title_short The application of machine learning in inner built environment: scientometric analysis, limitations, and future directions
title_sort application of machine learning in inner built environment scientometric analysis limitations and future directions
topic machine learning
interior design
artificial intelligence
interior-environment
smart technology
sustainability
url https://www.frontiersin.org/articles/10.3389/fbuil.2024.1413153/full
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