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Self-coding: A method to assess semantic validity and bias when coding open-ended responses

机译:自编码:在编码开放式响应时评估语义有效性和偏见的方法

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Open-ended survey questions can provide researchers with nuanced and rich data, but content analysis is subject to misinterpretation and can introduce bias into subsequent analysis. We present a simple method to improve the semantic validity of a codebook and test for bias: a “self-coding” method where respondents first provide open-ended responses and then self-code those responses into categories. We demonstrated this method by comparing respondents’ self-coding to researcher-based coding using an established codebook. Our analysis showed significant disagreement between the codebook’s assigned categorizations of responses and respondents’ self-codes. Moreover, this technique uncovered instances where researcher-based coding disproportionately misrepresented the views of certain demographic groups. We propose using the self-coding method to iteratively improve codebooks, identify bad-faith respondents, and, perhaps, to replace researcher-based content analysis.
机译:开放式调查问题可以为研究人员提供细微和丰富的数据,但内容分析可能会误解,并可以将偏见引入后续分析。 我们提出了一种简单的方法来提高码本的语义有效性和偏置的测试:一个“自编码”方法,受访者首先提供开放式响应,然后将这些响应自编码为类别。 我们通过将受访者的自编码与基于研究员的编码进行比较来证明了这种方法。 我们的分析表明,码本分配的响应和受访者自我代码之间的分配分类之间的显着分歧。 此外,该技术未发现基于研究人员的编码不成比例地歪曲某些人口组的观点的实例。 我们建议使用自编码方法来迭代改进码本,识别糟糕的受访者,也许是取代基于研究员的内容分析。

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