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SeMemNN

ICSC conference paper: SeMemNN: A Semantic Matrix Based Memory Neural Network for Text Classification

How to run the model: (super easy)

  1. download the ag_news(raw data, no need to do the preprocessing)
  2. install the dependencies
  3. execute Train.py