客户参与度
探索性研究
上诉
业务
恐惧上诉
广告
心理学
社会化媒体
营销
计算机科学
社会学
社会心理学
万维网
政治学
人类学
法学
作者
Dorit Zimand-Sheiner,Ofrit Kol,Shalom Levy
出处
期刊:Marketing Intelligence & Planning
[Emerald Publishing Limited]
日期:2024-05-31
卷期号:42 (7): 1195-1213
被引量:1
标识
DOI:10.1108/mip-06-2023-0293
摘要
Purpose Studying the effect of social media advertising on consumer engagement, this study analyzes the impact of shared-experience versus personal message strategies, informational versus transformational creative appeals and low-involvement products versus high-involvement products. It aims to determine how best to combine ad elements to affect consumer engagement on different levels. Design/methodology/approach Using an online survey among 448 Facebook users, an experimental factorial design of 2 (message strategy conditions) X 2 (creative appeal conditions) X 2 (product types: TV vs. frozen pizza) was used. Each advertisement was evaluated on three facets of engagement: cognitive, psychological and behavioral. Findings Results indicate that informational appeal is preferable for all conditions. The effectiveness of message strategy differs by product type, and interactions between message and appeal are significant only for the high-involvement product. Additionally, it indicates that message strategy is most significant in affecting behavioral engagement and not necessarily cognitive or psychological engagement. Practical implications To develop effective Facebook ads, practitioners should use a personal/informational combination when working with high-involvement products and a shared-experience/informational combination when working with low-involvement products. Originality/value An original grid for integrating message strategy and creative appeal is constructed in this paper. Besides behavioral engagement, it also evaluates cognitive and psychological engagement. By comparing products with a high and low involvement level, it provides marketers with actionable recommendations to increase social media campaign effectiveness.
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