将人类洞察融入文本分析:新兴食品科技企业社交媒体品牌传播的半监督话题建模

IF 3 2区 社会学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Leona Yi-Fan Su, Tianli Chen, Yee Man Margaret Ng, Ziyang Gong, Yi-Cheng Wang
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引用次数: 0

摘要

文本社交媒体数据已经成为研究人员理解信息策略和其他营销实践不可或缺的一部分。在品牌传播领域,本研究采用并扩展了一种半监督机器学习方法,即引导潜在狄利克雷分配(LDA),该方法将人类的见解融入到主题的发现和分类中。我们用它来分析涉及新兴食品技术——人造肉的企业的推文,并描绘出这些品牌使用的四种关键信息策略:提供功能性、教育性、企业社会责任和关系内容。我们进一步确定了品牌与其Twitter数据中嵌入的关键主题之间的关系。模型性能的比较表明,引导LDA可能是传统LDA的一个有利选择,传统LDA的特点是效率高,在研究人员中广受欢迎,但由于其无监督的性质,产生的结果可能难以解释。因此,本研究对传播和营销学者具有重要的理论和方法意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating Human Insights Into Text Analysis: Semi-Supervised Topic Modeling of Emerging Food-Technology Businesses’ Brand Communication on Social Media
Textual social media data have become indispensable to researchers’ understanding of message strategies and other marketing practices. In a new departure for the field of brand communication, this study adopts and extends a semi-supervised machine-learning approach, guided latent Dirichlet allocation (LDA), which incorporates human insights into the discovery and classification of topics. We used it to analyze tweets from businesses involved with an emerging food technology, cultured meat, and delineated four key message strategies used by these brands: providing functional, educational, corporate social responsibility, and relational content. We further ascertained the relationships between brands and the key topics embedded in their Twitter data. A comparison of model performance suggests that guided LDA can be an advantageous alternative to traditional LDA, which is characterized by high efficiency and immense popularity among researchers, but—because of its unsupervised nature—yields findings that can be difficult to interpret. The present study therefore has critical theoretical and methodological implications for communication and marketing scholars.
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来源期刊
Social Science Computer Review
Social Science Computer Review 社会科学-计算机:跨学科应用
CiteScore
9.00
自引率
4.90%
发文量
95
审稿时长
>12 weeks
期刊介绍: Unique Scope Social Science Computer Review is an interdisciplinary journal covering social science instructional and research applications of computing, as well as societal impacts of informational technology. Topics included: artificial intelligence, business, computational social science theory, computer-assisted survey research, computer-based qualitative analysis, computer simulation, economic modeling, electronic modeling, electronic publishing, geographic information systems, instrumentation and research tools, public administration, social impacts of computing and telecommunications, software evaluation, world-wide web resources for social scientists. Interdisciplinary Nature Because the Uses and impacts of computing are interdisciplinary, so is Social Science Computer Review. The journal is of direct relevance to scholars and scientists in a wide variety of disciplines. In its pages you''ll find work in the following areas: sociology, anthropology, political science, economics, psychology, computer literacy, computer applications, and methodology.
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