基于TPB-TAM模型和多理论集成的生成式AI图像工具的认知接受度

Yao Wang , Xinwei Guan , Yiwei Sun , Hanyu Wang , Dengkai Chen
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引用次数: 0

摘要

生成式人工智能图像工具的快速发展和应用正在深刻地重塑图像生成的格局。作为主要的用户群体,设计师对这些工具的接受程度直接影响到他们的应用效果和行业趋势。本研究整合计划行为理论(TPB)和技术接受模型(TAM),从信息系统成功模型(ISSM)和感知风险理论中提取关键变量,并引入用户体验和技术焦虑的概念,构建了设计师在不同设计类型中使用生成式人工智能图像工具的行为意图的综合模型。本研究利用AMOS软件和CB-SEM结构方程模型对有效数据进行分析,揭示了不同设计情境下主观规范、认知态度和感知行为控制对使用意图的显著影响。它还突出了系统信息质量等外部变量对主观规范等中介变量的差异化影响。通过这些分析,本研究明确了各种外部变量对行为意愿的具体影响机制。本研究为理解设计师对生成式AI图像工具的认知接受度提供了新的视角,并提出了差异化的推广和培训策略,为行业实践提供了有价值的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The cognitive acceptance of generative AI image tools based on TPB-TAM model and multi-theory integration
The rapid development and application of generative AI image tools are profoundly reshaping the landscape of image generation. As a primary user group, designers' acceptance of these tools directly impacts their application effectiveness and industry trends. This study integrates the Theory of Planned Behavior (TPB) and the Technology Acceptance Model (TAM), extracts key variables from the Information Systems Success Model (ISSM) and the theory of perceived risk, and introduces the concepts of user experience and technological anxiety to construct a comprehensive model of designers' behavioral intentions to use generative AI image tools across different design types. Using AMOS software and the CB-SEM structural equation model to analyze valid data, this study reveals the significant impact of subjective norms, cognitive attitudes, and perceived behavioral control on usage intention in different design contexts. It also highlights the differentiated influence of external variables, such as system information quality, on intermediary variables like subjective norms. Through these analyses, the study clarifies the specific impact mechanisms of various external variables on behavioral intention. This study offers a new perspective on understanding designers' cognitive acceptance of generative AI image tools and proposes differentiated promotion and training strategies, providing valuable guidance for industry practice.
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