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CONTENT ANALYSIS OF SOCIAL MEDIA: A GROUNDED THEORY APPROACH

机译:社交媒体的内容分析:基础理论方法

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Social media has become a vital part of social life. It affects the beliefs, values, and attitudes of people, as well as their intentions and behaviors. Meanwhile, social media enables governments and organizations to engage people while allowing consumers to make informed decisions. Therefore, converting social media content into information, key concepts, and themes is crucial for generating knowledge and formulating strategies. In this paper, we introduce a grounded theory approach that involves (i) defining the goal and scope of a study; (ii) logically and systematically identifying social media sources, total sample size, and the sample size of every source category; (iii) employing computer-aided lexical analysis with statistical and graphical methods to identify the key dimensions of the topic while minimizing human errors, as well as coding and categorization biases; and (iv) interpreting the findings of the study. This systematic approach was illustrated with the destination image of Macao as an example. The proposed methodology with its hybrid nature can quantitatively analyze qualitative social media content (e. g., impressions, opinions, and feelings) and can identify emergent concepts from the ground up. This paper contributes to electronic commerce research by presenting a novel approach for extracting, analyzing, and understanding social media content.
机译:社交媒体已成为社交生活的重要组成部分。它影响着人们的信念,价值观和态度,以及人们的意图和行为。同时,社交媒体使政府和组织能够与人们互动,同时允许消费者做出明智的决定。因此,将社交媒体内容转换为信息,关键概念和主题对于生成知识和制定策略至关重要。在本文中,我们介绍了一种扎根的理论方法,其中包括:(i)定义研究的目标和范围; (ii)从逻辑上和系统上确定社交媒体来源,总样本量以及每个来源类别的样本量; (iii)使用计算机辅助的词法分析以及统计和图形方法来确定主题的主要方面,同时最大程度地减少人为错误以及编码和分类偏差; (iv)解释研究结果。以澳门的目的地形象为例说明了这种系统的方法。所提出的方法具有混合性质,可以定量分析定性社交媒体内容(例如,印象,观点和感受),并且可以从头开始识别新兴概念。本文通过提出一种提取,分析和理解社交媒体内容的新颖方法,为电子商务研究做出了贡献。

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