旅游
仿真
知识管理
独创性
计算机科学
资源(消歧)
商业生态系统
商业模式
文化学习
业务
过程管理
营销
社会学
定性研究
经济
计算机网络
社会科学
教育学
政治学
法学
经济增长
作者
Arne Schuhbert,Hannes Thees,Harald Pechlaner
出处
期刊:European Journal of Innovation Management
[Emerald (MCB UP)]
日期:2023-03-11
被引量:3
标识
DOI:10.1108/ejim-08-2022-0448
摘要
Purpose The below-average innovative capacity of the tourism sector raises the question on the potentials of digital business ecosystems (DBEs) to overcome these shortages at a destination level – especially within a smart city environment. Using the example of the German Capital Berlin, this article aims to discuss both the possibilities and inhibitors of innovative knowledge-creation by building scenarios on one specific design option: the integration of digital deep learning (DL) functionalities and traditional organizational learning (OL) processes. Design/methodology/approach Using the qualitative GABEK-method, major characteristics of a DBE as resource-, platform- and innovation systems are analyzed toward their interactions with the construction of basic action models (as the basic building blocks of knowledge). Findings Against the background of the research findings, two scenarios are discussed for future evolution of the Berlin DBE, one building on cultural emulation as a trigger for optimized DL functionalities and one following the idea of cultural engineering supported by DL functionalities. Both scenarios focus specifically on the identified systemic inhibitors of innovative capabilities. Research limitations/implications While this study highlights the potential of the GABEK method to analyze mental models, separation of explicit and latent models still remains challenging – so does the reconstruction of higher order mental models which require a combined take on interview techniques in the future. Originality/value The resulting scenarios innovatively combine concepts from OL theory with the concept of DBE, thus indicating possible pathways into a tourism future where the limitations of human learning capacities could be compensated through the targeted support of general artificial intelligence (AI).
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