计算机科学
社会化媒体
数据科学
主题分析
定性性质
背景(考古学)
集合(抽象数据类型)
定性研究
过程(计算)
意义(存在)
万维网
心理学
社会学
机器学习
社会科学
古生物学
程序设计语言
心理治疗师
操作系统
生物
作者
Matthew Andreotta,Robertus Nugroho,Mark J. Hurlstone,Fabio Boschetti,Simon Farrell,Iain Walker,Cécile Paris
标识
DOI:10.3758/s13428-019-01202-8
摘要
To qualitative researchers, social media offers a novel opportunity to harvest a massive and diverse range of content without the need for intrusive or intensive data collection procedures. However, performing a qualitative analysis across a massive social media data set is cumbersome and impractical. Instead, researchers often extract a subset of content to analyze, but a framework to facilitate this process is currently lacking. We present a four-phased framework for improving this extraction process, which blends the capacities of data science techniques to compress large data sets into smaller spaces, with the capabilities of qualitative analysis to address research questions. We demonstrate this framework by investigating the topics of Australian Twitter commentary on climate change, using quantitative (non-negative matrix inter-joint factorization; topic alignment) and qualitative (thematic analysis) techniques. Our approach is useful for researchers seeking to perform qualitative analyses of social media, or researchers wanting to supplement their quantitative work with a qualitative analysis of broader social context and meaning.
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