--- library_name: transformers tags: [text-classification, hate-speech] --- # Model Card for Model ID This model is fine-tuned on top of distill bert base uncased for hatespeech. Its purpose is to predict whether a given text contains hate speech or not. Class Label are 1 for hatspeech and 0 for not. ## Model Details ### Model Description **Important info** This model works with binary classification and doesn't consider multilabel clssification. It detects it's either a hatespeech or not. - **Developed by:** Ayush Dhoundiyal - **Language(s) (NLP):** English - **Finetuned from model:** Bert Base Uncased ### Model Sources [optional] - **Paper:** https://github.com/ayushdh96/Natural-Language-Processing/blob/main/Ayush_Dhoundiyal_Project_Report.pdf [More Information Needed] ## Training Details ### Training Data Pre-processing invloved basic steps like lemmtizing, stemming of words. Removing stop words and lowercasing the text to be classified. It's requested to perform these steps for good results. ## Evaluation The model provides the accuracy of 0.96, precision of 0.97. recall of 0.97 and f1 score of 0.97.