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Inter-Coder Agreement in One-to-Many Classification: Fuzzy Kappa

机译:一对多分类中的编码间协议:模糊Kappa

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摘要

Content analysis involves classification of textual, visual, or audio data. The inter-coder agreement is estimated by making two or more coders to classify the same data units, with subsequent comparison of their results. The existing methods of agreement estimation, e.g., Cohen’s kappa, require that coders place each unit of content into one and only one category (one-to-one coding) from the pre-established set of categories. However, in certain data domains (e.g., maps, photographs, databases of texts and images), this requirement seems overly restrictive. The restriction could be lifted, provided that there is a measure to calculate the inter-coder agreement in the one-to-many protocol. Building on the existing approaches to one-to-many coding in geography and biomedicine, such measure, fuzzy kappa, which is an extension of Cohen’s kappa, is proposed. It is argued that the measure is especially compatible with data from certain domains, when holistic reasoning of human coders is utilized in order to describe the data and access the meaning of communication.
机译:内容分析涉及文本,视觉或音频数据的分类。通过使两个或更多编码器对相同的数据单元进行分类,并随后对其结果进行比较,可以估算出编码器间的一致性。现有的一致度估算方法(例如Cohen的kappa)要求编码人员将每个内容单元置于预先建立的类别集中的一个类别中,并且只能将其划分为一个类别(一对一编码)。但是,在某些数据域(例如,地图,照片,文本和图像的数据库)中,此要求似乎过于严格。如果有一种措施可以计算一对多协议中的编码器间协议,则可以取消该限制。在现有的地理和生物医学一对多编码方法的基础上,提出了模糊量度(Kappa的一种扩展)这种度量方法。有人认为,当利用人类编码者的整体推理来描述数据并访问通信的含义时,该措施尤其与某些领域的数据兼容。

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