Publication: Automatic Detection of Everyday Social Behaviours and Environments from Verbatim Transcripts of Daily Conversations
Automatic Detection of Everyday Social Behaviours and Environments from Verbatim Transcripts of Daily Conversations
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Yordanova, K. Y., Demiray, B., Mehl, M. R., & Martin, M. (2019). Automatic Detection of Everyday Social Behaviours and Environments from Verbatim Transcripts of Daily Conversations. Proceedings of IEEE International Conference on Pervasive Computing and Communications, 242–251. https://doi.org/10.1109/percom.2019.8767403
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Coding in social sciences is a process that involves the categorisation of qualitative or quantitative data in order to facilitate further analysis. Coding is usually a manual process that involves a lot of effort and time to produce codes with high validity and interrater reliability. Although automated methods for quantitative data analysis are largely used in social sciences, there are only a few attempts at automatically or semi-automatically coding the data collected in qualitative studies. To address this problem, in this work w
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Yordanova, K. Y., Demiray, B., Mehl, M. R., & Martin, M. (2019). Automatic Detection of Everyday Social Behaviours and Environments from Verbatim Transcripts of Daily Conversations. Proceedings of IEEE International Conference on Pervasive Computing and Communications, 242–251. https://doi.org/10.1109/percom.2019.8767403