# FakeNewsRevealer Official implementation of the "Fake News Revealer (FNR): A Similarity and Transformer-Based Approach to Detect Multi-Modal Fake News in Social Media" paper [(ArXiv Link)](https://arxiv.org/pdf/2112.01131.pdf). ## Requirments FNR is built in Python 3.6 using PyTorch 1.8. Please use the following command to install the requirements: ``` pip install -r requirements.txt ``` ## How to Run First, place the data address and configuration into the config file in the data directory, and then follow the train and test commands. ### train To run with Optuna for parameter tuning use this command: ``` python main --data "DATA NAME" --use_optuna "NUMBER OF OPTUNA TRIALS" --batch "BATCH SIZE" --epoch "EPOCHS NUMBER" ``` To run without parameter tuning, adjust your parameters in the config file and then use the below command: ``` python main --data "DATA NAME" --batch "BATCH SIZE" --epoch "EPOCHS NUMBER" ``` ### test In the test step, at first, make sure to have the requested 'checkpoint' file then run the following line: ``` python main --data "DATA NAME" --just_test "REQESTED TRIAL NUMBER" ``` ## Bibtex Cite our paper using the following bibtex item: ``` @misc{ghorbanpour2021fnr, title={FNR: A Similarity and Transformer-Based Approach to Detect Multi-Modal Fake News in Social Media}, author={Faeze Ghorbanpour and Maryam Ramezani and Mohammad A. Fazli and Hamid R. Rabiee}, year={2021}, eprint={2112.01131}, archivePrefix={arXiv}, } ```