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通过整合AI属性、计划行为理论和T-EESST探讨生成式AI对社会可持续性的影响:基于深度学习的混合SEM-ANN方法

Exploring the Effect of Generative AI on Social Sustainability Through Integrating AI Attributes, TPB, and T-EESST: A Deep Learning-Based Hybrid SEM-ANN Approach

IEEE Transactions on Engineering Management · 2024
被引 31 · 同刊同年前 5%
ABS 3

中文导读

本研究整合AI属性、计划行为理论和技术-环境-经济-社会可持续性理论,基于1048名大学生数据,用混合结构方程模型和人工神经网络方法,发现态度是使用生成式AI的关键因素,且生成式AI正向影响社会可持续性。

Abstract

The swift progress of generative artificial intelligence (AI) tools offers remarkable potential for revolutionizing educational methods and enhancing social sustainability. Despite its potential, understanding the factors driving its adoption and how that affects social sustainability remains underexplored. This study aims to address this gap by integrating AI attributes (“perceived anthropomorphism,” “perceived intelligence,” and “perceived animacy”) with the theory of planned behavior and the technology-environmental, economic, and social sustainability theory (T-EESST) to develop a theoretical research model. Utilizing a hybrid structural equation modeling and artificial neural network approach, we analyzed data collected from 1048 university students to evaluate the developed model. Our findings revealed that while perceived behavioral control has an insignificant impact on generative AI use, attitudes emerge as the most critical factor, further reinforced by the significant role of subjective norms. Perceived anthropomorphism, perceived intelligence, and perceived animacy were also found to influence students’ attitudes significantly. More importantly, the findings supported the role of generative AI in positively affecting social sustainability, aligning with the principles of T-EESST. This study's significance lies in its holistic examination of the interplay between technological attributes, motivational aspects, and sustainability outcomes, offering valuable insights for various stakeholders.

人工智能社会可持续性教育技术计划行为理论结构方程模型