"Enhancing Automated Text Coding in Online Learning Research: A Systematic Calibration Framework for Large Language Models "
收藏DataCite Commons2025-07-03 更新2026-05-03 收录
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https://ieee-dataport.org/documents/enhancing-automated-text-coding-online-learning-research-systematic-calibration-framework
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资源简介:
"Based on the document, the original 1,500 coding entries dataset includes:Dataset Contents:1,500 anonymized text entries from student and instructor comments in online coursesHuman coding results - expert manual coding for all entriesGPT-4o coding outputs - two rounds of automated coding resultsCalibration materials - framework descriptions and calibration notes used for prompt optimizationData Characteristics:Source: 5 online courses (8,459 student comments + 212 instructor comments)Language: Original Chinese text with English translations for framework descriptionsPrivacy: All personal identifiers replaced with \"***\" markersScope: Covers 15 different coding frameworks spanning cognitive, emotional, and social dimensionsFormat: Provided as supplementary materials in spreadsheet formatPurpose: This dataset serves as the empirical foundation for evaluating the OLLM-C (Optimized Large Language Model Coding) framework's performance across diverse educational text analysis tasks, enabling transparency and reproducibility of the research findings."
提供机构:
IEEE DataPort
创建时间:
2025-07-03



