📑 Galician corpus for misogyny detection
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Updated
Jul 17, 2024 - Python
📑 Galician corpus for misogyny detection
SemEval 2022 Task 5: Multimedia Automatic Misogyny Identification - baseline models and dataset
MEME benchmark dataset for misogyny detection
Multimodal Misogyny Detection - SemEval 2022 - MAMI Challenge
Temis is an Automatic Misogyny Identification tool. Using Deep Learning models, it can be used to predict whether a text contains misogyny, which type it is and to whom it is targetted.
DetectHer is a lightweight ML project that detects gendered harassment on Twitter using interpretable models like Logistic Regression and SVM. Built from scratch with real-time scraped data and TF-IDF features, it balances accuracy, speed, and transparency, no black-box models, no GPU needed.
This repository contains the code for submission made at SemEval 2022 Task 5: MAMI
Hateful Meme challenge, Knowledge graph based approach
Generative AI & DL for Employee's Dashboard | Submission for Megathon'23 by Team Pandavas
Ben-Misog: A Benchmark Dataset for Misogynistic Comments in Bengali and Its Baseline Evaluation
This repository hosts a high-performance deep learning model designed to identify misogynistic content in Arabic social media text. Developed as an academic project, the model successfully overcomes significant linguistic challenges, such as dialectal variation and high Out-of-Vocabulary (OOV) rates.
Bengali Misogyny Identification with Deep Learning and LIME.
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