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An Application of UTAUT2 on Social Recommender Systems: Incorporating Social Information for Performance Expectancy

机译:UTAUT2在社交推荐系统上的应用:整合社交信息以提高绩效预期

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The recently proposed extended Unified Theory of Acceptance and Use of Technology (UTAUT2) offers new opportunities for exploring the acceptance of consumer technologies. This study utilizes UTAUT2 to explore the user acceptance of social recommender systems that have become more attractive owing to improved content personalization and adaptation to user preferences. Scholars have shown that these systems could improve a recommendation's accuracy. However, the UTAUT2's applicability and the explanation of performance expectancy for social recommender systems are still unclear. We developed a UTAUT2-based framework and tested it in a quantitative study with 266 participants. The structural equation model results show that UTAUT2 is applicable in the context of social recommender systems. Furthermore, the user's social network information, profile information, and reading behavior positively influence performance expectancy and the intention to adopt a social recommender system. Therefore, incorporating social information might overcome the shortcomings of other classic recommender systems.
机译:最近提出的扩展的技术接受和使用统一理论(UTAUT2)为探索消费者技术的接受提供了新的机会。这项研究利用UTAUT2来探索用户对社交推荐系统的接受程度,这些社交推荐系统由于改善了内容个性化和适应用户偏好而变得更具吸引力。学者表明,这些系统可以提高推荐的准确性。但是,UTAUT2的适用性以及对社交推荐系统的性能预期的解释仍不清楚。我们开发了基于UTAUT2的框架,并在266名参与者的定量研究中对其进行了测试。结构方程模型结果表明,UTAUT2适用于社交推荐系统。此外,用户的社交网络信息,个人资料信息和阅读行为会积极影响性能预期和采用社交推荐系统的意图。因此,合并社交信息可能会克服其他经典推荐系统的缺点。

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