--- license: apache-2.0 datasets: - fake_news_english language: - en metrics: - roc_auc pipeline_tag: text-classification --- # Pretrained Language Model for Fake News Detection > This repository contains a pretrained language model for fake news detection. The model was developed using PyTorch and the Hugging Face Transformers library, and was fine-tuned on a dataset of news articles to classify each article as either "fake" or "Satire". # Usage To use the pretrained model for fake news detection, you can follow these steps: > 1- Install the required dependencies, including PyTorch, Transformers, and scikit-learn. > > 2- Load the pretrained model using the `from_pretrained()` method in the Transformers library. > > 3- Tokenize your input text using the `tokenizer.encode_plus()` method. > > 4- Pass the tokenized input to the model's `forward()` method to get a prediction. Here's an example code snippet that demonstrates how to use the model: ``` from transformers import AutoTokenizer, AutoModelForSequenceClassification import torch # Load the pretrained model and tokenizer model_name = "Karim-Gamal/Roberta_finetuned_fake_news_english.pt" tokenizer = AutoTokenizer.from_pretrained(model_name) model = AutoModelForSequenceClassification.from_pretrained(model_name) # Tokenize the input text input_text = "This is a fake news article" inputs = tokenizer.encode_plus(input_text, padding=True, truncation=True, max_length=128, return_tensors="pt") # Get the model's prediction outputs = model(inputs["input_ids"], attention_mask=inputs["attention_mask"]) predictions = torch.softmax(outputs.logits, dim=1).detach().numpy() ``` # Performance > The model was evaluated on a test set of news articles, and achieved an AUC score of `95%`. This indicates that the model is able to effectively distinguish between fake and real news articles. > |Model name|Roc Auc| > |:---:|:---:| > |jy46604790/Fake-News-Bert-Detect|88 %| > |ghanashyamvtatti/roberta-fake-news|95 %| > |gpt2 / reward_model|82 %| > |gpt2 / imdb-sentiment-classifier|79 %| > |microsoft/Multilingual-MiniLM-L12-H384|86 %| > |hamzab/roberta-fake-news-classification|84 %| > |mainuliitkgp/ROBERTa_fake_news_classification|86 %| > |ghanashyamvtatti/roberta-fake-news after cleaning|82 %| > Based on the provided results, it seems like the `ghanashyamvtatti/roberta-fake-news` model performed the best with a ROC AUC of `95%`. This model was specifically designed for detecting fake news, which explains its high performance on this task. > Additionally, the `microsoft/Multilingual-MiniLM-L12-H384` model had a respectable performance with a ROC AUC of `86%` while being a lightweight model. Therefore, it was used in [our paper which is ( Federated Learning Based Multilingual Emoji prediction )](https://github.com/kareemgamalmahmoud/FEDERATED-LEARNING-BASED-MULTILINGUAL-EMOJI-PREDICTION-IN-CLEAN-AND-ATTACK-SCENARIOS) despite having slightly lower performance than other models. > On the other hand, the `GPT2` models (`gpt2/reward_model` and `gpt2/imdb-sentiment-classifier`) had lower performance compared to the other models. This may be due to the fact that `GPT2` models were pre-trained on different tasks and not specifically designed for fake news detection. >It is worth noting that even though the `ghanashyamvtatti/roberta-fake-news after cleaning` model had a lower performance (`82%`) than the original `ghanashyamvtatti/roberta-fake-news` model (`95%`), it might still be useful in certain scenarios, especially after cleaning the data. Finally, it is important to test the performance of the selected model after loading it from Huggingface to make sure it is functioning properly in the desired environment. # Model Card > For more information about the model's architecture, [The original model link](https://huggingface.co/ghanashyamvtatti/roberta-fake-news)