机器学习模型有助于在计算机辅助的个人面试工具中处理面试官的评论:一个案例研究

IF 1.1 3区 社会学 Q2 ANTHROPOLOGY
Catherine Billington, Gonzalo Rivero, Andrew Jannett, Jiating Chen
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引用次数: 1

摘要

在数据收集过程中,现场访谈者经常在开放文本字段中为案例添加注释或评论,以请求更新案例级数据。处理这些评论可以提高数据质量,但许多评论是不可操作的,处理仍然是一项成本高昂的手动任务。本文介绍了一个案例研究,使用机器学习工具的一种新应用来帮助评估这些评论。利用医疗支出小组调查中的5000多条评论,我们构建了一些特征,这些特征被输入到机器学习模型中,以预测数据技术人员之前分配的每条评论的分组类别,从而加快处理速度。该模型达到了前三名的高精度,并被纳入生产工具中进行编辑。对该工具进行的定性评价也取得了令人鼓舞的结果。机器学习工具的这种应用允许处理效率的小幅但有价值的提高,同时保持严格的数据质量标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Model Helps Process Interviewer Comments in Computer-assisted Personal Interview Instruments: A Case Study
During data collection, field interviewers often append notes or comments to a case in open text fields to request updates to case-level data. Processing these comments can improve data quality, but many are non-actionable, and processing remains a costly manual task. This article presents a case study using a novel application of machine learning tools to assist in the evaluation of these comments. Using over 5,000 comments from the Medical Expenditure Panel Survey, we built features that were fed to a machine learning model to predict a grouping category for each comment as previously assigned by data technicians to expedite processing. The model achieved high top-3 accuracy and was incorporated into a production tool for editing. A qualitative evaluation of the tool also provided encouraging results. This application of machine learning tools allowed a small but worthwhile increase in processing efficiency, while maintaining exacting standards for data quality.
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来源期刊
Field Methods
Field Methods Multiple-
CiteScore
2.70
自引率
5.90%
发文量
41
期刊介绍: Field Methods (formerly Cultural Anthropology Methods) is devoted to articles about the methods used by field wzorkers in the social and behavioral sciences and humanities for the collection, management, and analysis data about human thought and/or human behavior in the natural world. Articles should focus on innovations and issues in the methods used, rather than on the reporting of research or theoretical/epistemological questions about research. High-quality articles using qualitative and quantitative methods-- from scientific or interpretative traditions-- dealing with data collection and analysis in applied and scholarly research from writers in the social sciences, humanities, and related professions are all welcome in the pages of the journal.
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