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Force and Influence in Content Analysis: The Production of New Social Knowledge

机译:内容分析中的力量和影响:新社会知识的产生

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We examine the two traditions of content analysis: the first in which one substitutes words of a text with categories, and the second in which one looks for clusters of words that may refer to a theme. In the first tradition, preexisting dictionary categories give meaning to the words; in the second, meaning comes after the fact. Preexisting dictionary categories (the substitution model) are calibrated instruments applied within experimental designs that leave no space for doubt; meanwhile, the ability of the correlational model to conjure up complex themes from fragments of a text yields no unique solution. These differences have bearings on the production of new social knowledge. We expound on the epistemological foundations of the two traditions of interpretation and draw from them decision rules upon which one may rely for choosing among appropriate content-analytic tactics. Two reasons make this essay timely and critical: (1) the increasing variety of new content-analyticsoftware for particular purposes and (2) the almost exclusive focusing on software and technology at the expense of adjusting the choice of the software to the nature of the text. Two studies, one in historiometry, the other in autobiography, illustrate the liabilities and benefits of the two models of content analysis.tactics of computer-aided content analysis - hermeneutic chiasma - words as predictors versus words as symptoms
机译:我们研究了内容分析的两个传统:第一个传统是用类别替换文本的单词,第二个则是寻找可能涉及主题的单词簇。在第一个传统中,预先存在的字典类别赋予单词以含义;第二,含义紧随事实之后。预先存在的词典类别(替代模型)是在实验设计中使用的校准工具,毫无疑问;同时,相关模型从文本片段中构想出复杂主题的能力不会产生唯一的解决方案。这些差异与新的社会知识的产生有关。我们阐述了两种解释传统的认识论基础,并从中汲取了决策规则,在这些决策规则中,人们可以选择适当的内容分析策略。有两个原因使本文成为及时而关键的:(1)出于特定目的的新内容分析软件的种类不断增加;(2)几乎完全专注于软件和技术,但以适应于软件的性质调整为代价。文本。两项研究,一项是组织学计量学,另一项是关于自传学的研究,说明了两种内容分析模型的优点和益处。计算机辅助内容分析的策略-解释性裂痕-单词作为预测变量与单词作为症状

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