品牌参与度
结构方程建模
同余(几何)
独创性
品牌延伸
感知
心理学
广告
背景(考古学)
品牌知名度
验证性因素分析
产品(数学)
营销
品牌管理
业务
社会心理学
数学
计算机科学
社会化媒体
古生物学
统计
几何学
神经科学
生物
万维网
创造力
作者
Alper Özer,Mehmet Özer,İrem BURAN,Esra Genç
出处
期刊:Journal of Product & Brand Management
[Emerald Publishing Limited]
日期:2025-01-22
标识
DOI:10.1108/jpbm-01-2023-4283
摘要
Purpose This study aims to investigate the impact of brand engagement on consumer responses to brand extensions, particularly in terms of value perception, attitude and purchase intention in a masstige context. The study examines low-fit/high-functionality and high-fit/low-functionality products. It also explores the crucial role of self-congruence in enhancing brand engagement, which leads to positive consumer responses towards brand extensions. Design/methodology/approach After establishing the theoretical foundations, pre-tests identified the product types and their fit level. In this quantitative study, 464 questionnaires were administered. Confirmatory factor analysis and structural equation modelling validated the model and tested the hypotheses for low-fit/high-functionality and high-fit/low-functionality products of a masstige brand. Findings Data analysis shows that brand engagement positively affects value perception, attitude and purchase intention. However, consumers’ responses to brand extension differed for low-fit versus high-fit products. Moreover, social self-congruence and actual and ideal self-congruence positively impact consumers’ active engagement with masstige brands. Originality/value This research shows that low-fit extensions of masstige brands can succeed with high functionality, while high-fit extensions mitigate the negative effects of low functionality, a key attribute of masstige brands. The study adds to the limited literature on self-congruence and engagement by identifying actual and ideal self-congruence as determinants of brand engagement. It is also among the first to demonstrate that social self-congruence drives brand engagement for masstige brands.
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