Machine Identification of High Impact Research through Text and Image Analysis

@article{Stamenovic2017MachineIO,
  title={Machine Identification of High Impact Research through Text and Image Analysis},
  author={M. Stamenovic and Sam Schick and Jiebo Luo},
  journal={2017 IEEE Third International Conference on Multimedia Big Data (BigMM)},
  year={2017},
  pages={98-104}
}
  • M. Stamenovic, Sam Schick, Jiebo Luo
  • Published 2017
  • Computer Science, Mathematics
  • 2017 IEEE Third International Conference on Multimedia Big Data (BigMM)
  • The volume of academic paper submissions and publications is growing at an ever increasing rate. While this flood of research promises progress in various fields, the sheer volume of output inherently increases the amount of noise. We present a system to automatically separate papers with a high from those with a low likelihood of gaining citations as a means to quickly find high impact, high quality research. Our system uses both a visual classifier, useful for surmising a document's overall… CONTINUE READING

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