Learning about meetings

@article{Kim2014LearningAM,
  title={Learning about meetings},
  author={Been Kim and C. Rudin},
  journal={Data Mining and Knowledge Discovery},
  year={2014},
  volume={28},
  pages={1134-1157}
}
  • Been Kim, C. Rudin
  • Published 2014
  • Mathematics, Computer Science
  • Data Mining and Knowledge Discovery
  • Most people participate in meetings almost every day, multiple times a day. The study of meetings is important, but also challenging, as it requires an understanding of social signals and complex interpersonal dynamics. Our aim in this work is to use a data-driven approach to the science of meetings. We provide tentative evidence that: (i) it is possible to automatically detect when during the meeting a key decision is taking place, from analyzing only the local dialogue acts, (ii) there are… CONTINUE READING

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