针对母婴护理产品行业社交媒体营销的图片推荐--一种机器学习方法

IF 3.9 4区 管理学 Q2 BUSINESS Asia Pacific Journal of Marketing and Logistics Pub Date : 2024-09-17 DOI:10.1108/apjml-04-2024-0463
Kung-Jeng Wang, Jeh-An Wang
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引用次数: 0

摘要

目的数字营销领域正在迅速发展,但视觉内容的整合仍然在很大程度上依赖于人类的专业知识。设计/方法/方法本研究采用了一系列机器学习技术--包括开放科学框架特征检测、全视角细分、自定义实例细分和人脸检测计算方法--来分析和预测图片的吸引力,从而提高用户参与度和亲子亲密度。研究结果对 DT、LightGBM、RIPPER 算法和 CNN 等各种 ML 模型的探索提供了一种比较分析方法,解决了现有文献中经常依赖于孤立模型评估的方法论空白。根据我们对参与率和亲子亲密关系的象限分析,为现实世界的应用选择模型取决于性能和可解释性之间的平衡。这项研究有助于母婴护理营销中的形象设计,并为推荐系统提供了分析见解。
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Image recommendation for social media marketing in maternity and baby care product industry – a machine learning approach

Purpose

The digital marketing landscape is rapidly evolving, but the integration of visual content still heavily depends on human expertise. Driven by the quest for innovative marketing strategies that resonate with family-oriented consumers, this study seeks to bridge this gap by applying machine learning to analyze visual content in the maternity and baby care product sector.

Design/methodology/approach

This study incorporates a range of machine learning techniques – including open science framework feature detection, panoptic segmentation, customized instance segmentation, and face detection calculation methods – to analyze and predict the appeal of images, thereby enhancing user engagement and parent-child intimacy.

Findings

The exploration of various ML models, such as DT, LightGBM, RIPPER algorithm, and CNNs, has offered a comparative analysis that addresses a methodological gap in the existing literature, which frequently depends on isolated model evaluations. According to our quadrant analysis with respect to engagement rate and parent-child intimacy, the selection of a model for real-world applications depends on balancing performance and interpretability.

Originality/value

The proposed system offers a series of actionable recommendations designed to enhance customer engagement and foster brand loyalty. This study contributes to image design in maternity and baby care marketing and provides analytical insights for recommendation systems.

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来源期刊
CiteScore
7.90
自引率
18.90%
发文量
96
期刊介绍: The Asia Pacific Journal of Marketing and Logistics (APJML) provides a unique focus on marketing and logistics in the Asia Pacific region. It publishes research which focus on marketing and logistics problems, new procedures and practical approaches, systematic and critical reviews of changes in marketing and logistics and cross-national and cross-cultural comparisons of theory into practice. APJML is to publish articles including empirical research, conceptual papers, in-depth literature review and testing of alternative methodologies and theories that have significant contributions to the knowledge of marketing and logistics in the Asia Pacific region. The journal strives to bridge the gap between academia and practice, hence it also publishes viewpoints from practitioners, case studies and research notes of emerging trends. Book reviews of cutting edge topics are also welcome. Readers will benefit from reports on the latest findings, new initiatives and cutting edge methodologies. Readers outside the region will have a greater understanding of the cultural orientation of business in the Asia Pacific and will be kept up to date with new insights of upcoming trends. The journal recognizes the dynamic impact of Asian Pacific marketing and logistics to the international arena. An in-depth understanding of the latest trends and developments in Asia Pacific region is imperative for firms and organizations to arm themselves with competitive advantages in the 21st century. APJML includes, but is not restricted to: -Marketing strategy -Relationship marketing -Cross-cultural issues -Consumer markets and buying behaviour -Managing marketing channels -Logistics specialists -Branding issues in Asia Pacific markets -Segmentation -Marketing theory -New product development -Marketing research -Integrated marketing communications -Legal and public policy -Cross national and cross cultural studies
期刊最新文献
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