The role of green blue ocean strategy in enhancing frugal innovation through IoT and AI: A resource-based view perspective

被引:1
作者
Aqmala, Diana [1 ]
Panjaitan, Roymon [2 ]
Ardyan, Elia [3 ]
Putra, Febrianur Ibnu Fitroh Sukono [4 ]
机构
[1] Univ Dian Nuswantoro, Learning Dev & Curriculum Dept, Jl Nakula 1 5-11, Semarang 50131, Central Java, Indonesia
[2] Univ Dian Nuswantoro, Jl Nakula 1 5-11, Semarang 50131, Central Java, Indonesia
[3] Sekolah Tinggi Ilmu Ekon Ciputra Makassar, Kawasan CitraLand City CPI, Management Dept, Jalan Sunset Blvd, Makassar 90224, South Sulawesi, Indonesia
[4] Univ Dian Nuswantoro, Qual Assurance Dept, Qual & Serv Sect, Jl Nakula 1 5-11, Semarang 50131, Central Java, Indonesia
关键词
internet of things; artificial intelligence; green blue ocean strategy; frugal innovation; resource-based view; sustainability; sustainable strategy; digital technology; sustainability-driven innovation; sustainable innovation; ARTIFICIAL-INTELLIGENCE; FINANCIAL PERFORMANCE; PRODUCT INNOVATION; SUPPLY CHAIN; INTERNET; THINGS; KNOWLEDGE; FUTURE; FIRM; WORK;
D O I
10.7341/20252124
中图分类号
F [经济];
学科分类号
02 ;
摘要
PURPOSE: This study explores the role of Green Blue Ocean Strategy (GBOS) in promoting frugal innovation by leveraging IoT and AI from an RBV theoretical perspective, targeting creative entrepreneurs in Central Java, Indonesia. METHODOLOGY: A quantitative approach was used, with Structural Equation Modelling (SEM) analyzed via AMOS. Data from 262 creative entrepreneurs were collected through an online closed questionnaire using purposive sampling. FINDINGS: The study reveals that (1) IoT does not significantly impact frugal innovation, (2) AI positively influences frugal innovation, and (3) GBOS effectively mediates the relationship between IoT, AI, and frugal innovation, suggesting that integrating sustainable strategies with technology can lead to more cost-effective and inclusive innovations. IMPLICATIONS for theory and practice: The study extends the RBV framework by integrating the GBOS concept, demonstrating its effectiveness in optimizing digital technology for sustainability-driven innovation. It contributes to the literature on sustainability strategies and the Resource-Based View by introducing a novel theoretical model that links GBOS, IoT, and AI with frugal innovation. Practically, GBOS offers a pathway for creative entrepreneurs to overcome resource constraints and achieve competitive advantages through sustainable practices. ORIGINALITY AND VALUE: This study introduces Green Blue Ocean Strategy (GBOS) as a novel conceptual framework that extends the traditional Blue Ocean Strategy (BOS) by integrating sustainability principles. GBOS addresses both economic and environmental concerns, enabling businesses to achieve cost-effective innovation. Grounded in the Resource-Based View (RBV), this study systematically develops and empirically tests GBOS by linking it with IoT, AI, and frugal innovation. The framework offers a new lens for sustainable competitive advantage in resource-constrained environments.
引用
收藏
页码:56 / 81
页数:26
相关论文
共 170 条
[1]  
Abdulkareem A., 2022, International Journal of Transformations in Business Management, V12, P132, DOI [10.37648/ijtbm.v12i02.007, DOI 10.37648/IJTBM.V12I02.007]
[2]  
Akcay M., 2020, Osmangazi Journal of Medicine, V43, P339, DOI [10.20515/otd.691331, DOI 10.20515/OTD.691331]
[3]   Sustainable frugal innovation - The connection between frugal innovation and sustainability [J].
Albert, Martin .
JOURNAL OF CLEANER PRODUCTION, 2019, 237
[4]  
Alliance A., 2020, Management and Business Education in the Time of Artificial Intelligence, P55
[5]   Green IoT for Eco-Friendly and Sustainable Smart Cities: Future Directions and Opportunities [J].
Almalki, Faris A. ;
Alsamhi, S. H. ;
Sahal, Radhya ;
Hassan, Jahan ;
Hawbani, Ammar ;
Rajput, N. S. ;
Saif, Abdu ;
Morgan, Jeff ;
Breslin, John .
MOBILE NETWORKS & APPLICATIONS, 2023, 28 (01) :178-202
[6]   Toward advancing theory on creativity in marketing and artificial intelligence [J].
Ameen, Nisreen ;
Sharma, Gagan Deep ;
Tarba, Shlomo ;
Rao, Amar ;
Chopra, Ritika .
PSYCHOLOGY & MARKETING, 2022, 39 (09) :1802-1825
[7]   Multivariate normal approximation of the maximum likelihood estimator via the delta method [J].
Anastasiou, Andreas ;
Gaunt, Robert E. .
BRAZILIAN JOURNAL OF PROBABILITY AND STATISTICS, 2020, 34 (01) :136-149
[8]   STRUCTURAL EQUATION MODELING IN PRACTICE - A REVIEW AND RECOMMENDED 2-STEP APPROACH [J].
ANDERSON, JC ;
GERBING, DW .
PSYCHOLOGICAL BULLETIN, 1988, 103 (03) :411-423
[9]   Data interplay: A model to optimize data usage in the Internet of Things [J].
Andrade, Leandro ;
De Santana, Cleber Jorge Lira ;
Alencar, Brenno De Mello ;
Silva, Claudio, Jr. ;
Prazeres, Cassio .
SOFTWARE-PRACTICE & EXPERIENCE, 2023, 53 (06) :1410-1437
[10]  
[Anonymous], 2019, OECD SME and Entrepreneurship Outlook 2019 Policy Highlights