Citation Intent Classification in scientific papers using the Scicite dataset an Pytorch

Overview

Citation Intent Classification

Table of Contents

About The Project

Citation Intent Classification in scientific papers using the Scicite dataset an Pytorch

For more information, read the report located in the repo root.

Built With

Installation

To get a local copy up and running follow these simple steps.

  1. Clone the repo
git clone https://github.com/FedeNoce/Citation_Intent_Classification.git
  1. Download GloVe and ELMo word representation from the link above
  2. Download Scicite dataset

Usage

  1. Convert jsonl file in Scicite to csv with jsonl_to_csv.py

  2. Set hyperparameters and paths in classification.py and in utils.py

  3. To train the model run classification.py

Authors

Acknowledgments

We tried to reply the results obtained in Structural Scaffolds for Citation Intent Classification in Scientific Publications - Computer Engineering Master Degree @University of Florence

Owner
Federico Nocentini
Computer Science Student
Federico Nocentini
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