Feng Yilin
Institute for Digital Technologies, Loughborough University London, London, United Kingdom.
Front Artif Intell. 2023 May 24;6:1167735. doi: 10.3389/frai.2023.1167735. eCollection 2023.
The current recommendation system predominantly relies on evidential factors such as behavioral outcomes and purchasing history. However, limited research has been conducted to explore the use of psychological data in these algorithms, such as consumers' self-perceived identities. Based on the gap identified and the soaring significance of levering the non-purchasing data, this study presents a methodology to quantify consumers' self-identities to help examine the relationship between these psychological cues and decision-making in an e-commerce context, focusing on the projective self, which has been overlooked in previous research. This research is expected to contribute to a better understanding of the cause of inconsistency in similar studies and provide a basis for further exploration of the impact of self-concepts on consumer behavior. The coding method in grounded theory, in conjunction with the synthesis of literature analysis, was employed to generate the final approach and solution in this study as they provide a robust and rigorous basis for the findings and recommendations presented in this study.
当前的推荐系统主要依赖于行为结果和购买历史等证据因素。然而,对于在这些算法中使用心理数据(如消费者的自我认知身份)的研究却非常有限。基于所发现的差距以及利用非购买数据的重要性日益凸显,本研究提出了一种方法来量化消费者的自我身份,以帮助检验这些心理线索与电子商务环境中决策之间的关系,重点关注以往研究中被忽视的投射自我。本研究有望有助于更好地理解类似研究中不一致的原因,并为进一步探索自我概念对消费者行为的影响提供依据。本研究采用扎根理论中的编码方法,并结合文献分析的综合结果,以生成最终的方法和解决方案,因为它们为研究中提出的发现和建议提供了坚实而严谨的基础。