Hate speech detection has become an important task in NLP due to the growing frequency of hate speech on online forums and social media. The proposed research work aims to improve hate speech detection by doing modification in standard i.e., Modified bi-LS TM model vs RCNN. The study examines how well the modified model performs on tasks involving the classification of hate speech when compared to a conventional LS TM model. The improved bi-LS TM model is intended to capture the context and relationships more accurately between the words in hate speech utterances.The study uses a publicly accessible dataset of tweets containing hate speech and tweets without any hate speech. The proposed model is trained and tested with the help of various performance metrics such as F1-score, accuracy and precision, recall. The research outcomes show that the proposed model outperforms the standard IS TM model in detecting hate speech. https://ieeexplore.ieee.org/abstract/document/10142895 Share this: Print (Opens in new window) Print Share on Facebook (Opens in new window) Facebook Share on LinkedIn (Opens in new window) LinkedIn Share on Reddit (Opens in new window) Reddit Share on WhatsApp (Opens in new window) WhatsApp Share on Bluesky (Opens in new window) Bluesky Email a link to a friend (Opens in new window) Email Like this:Like Loading... Post navigation On the rise of fear speech in online social media (PNAS) Detecting Harmful Content on Online Platforms: What Platforms Need vs. Where Research Efforts Go (ACM Digital Library)