Replication Data for: Selecting More Informative Training Sets with Fewer Observations
收藏NIAID Data Ecosystem2026-05-01 收录
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https://doi.org/10.7910/DVN/4ROL8S
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A standard text-as-data workflow in the social sciences involves identifying a set of documents to be labeled, selecting a random sample of them to label using research assistants, training a supervised learner to label the remaining documents, and validating that model’s performance using standard accuracy metrics. The most resource-intensive component of this the hand-labeling: carefully reading documents, training research assistants, and paying human coders to label documents in duplicate or more. We show that hand-coding an algorithmically-selected rather than a simple-random sample can improve model performance above baseline by as much as 50%, or reduce hand-coding costs by up to two-thirds, in applications predicting (1) U.S executive order significance and (2) financial sentiment on social media. We introduce open-source software to implement these tools, which we hope can make supervised learning cheaper and more accessible to researchers.
创建时间:
2023-04-29



