Publication | Open Access
CollabCoder: A Lower-barrier, Rigorous Workflow for Inductive Collaborative Qualitative Analysis with Large Language Models
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Citations
44
References
2024
Year
Unknown Venue
Rigorous WorkflowEngineeringSoftware EngineeringCollaborative Qualitative AnalysisSoftware AnalysisApplied LinguisticsLarge Language ModelsNatural Language ProcessingRigorous Cqa ProcedureData ScienceCollaborative LearningComputational LinguisticsData IntegrationConversation AnalysisData CodingLanguage StudiesMachine TranslationCode GenerationQualitative Analysis RigorLearning AnalyticsComputer ScienceCode RepresentationSoftware DesignQualitative AnalysisCollaborative ModelingCollaborative Data AnalysisHuman-computer InteractionLinguistics
Collaborative Qualitative Analysis (CQA) can enhance qualitative analysis rigor and depth by incorporating varied viewpoints. Nevertheless, ensuring a rigorous CQA procedure itself can be both complex and costly. To lower this bar, we take a theoretical perspective to design a one-stop, end-to-end workflow, CollabCoder, that integrates Large Language Models (LLMs) into key inductive CQA stages. In the independent open coding phase, CollabCoder offers AI-generated code suggestions and records decision-making data. During the iterative discussion phase, it promotes mutual understanding by sharing this data within the coding team and using quantitative metrics to identify coding (dis)agreements, aiding in consensus-building. In the codebook development phase, CollabCoder provides primary code group suggestions, lightening the workload of developing a codebook from scratch. A 16-user evaluation confirmed the effectiveness of CollabCoder, demonstrating its advantages over the existing CQA platform. All related materials of CollabCoder, including code and further extensions, will be included in: https://gaojie058.github.io/CollabCoder/.
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