AIセキュリティポータル K Program
Homograph Attacks on Maghreb Sentiment Analyzers
Share
Abstract
We examine the impact of homograph attacks on the Sentiment Analysis (SA) task of different Arabic dialects from the Maghreb North-African countries. Homograph attacks result in a 65.3% decrease in transformer classification from an F1-score of 0.95 to 0.33 when data is written in "Arabizi". The goal of this study is to highlight LLMs weaknesses' and to prioritize ethical and responsible Machine Learning.
Sentiment analysis of algerian dialect using machine learning and deep learning with word2vec
Ahmed Cherif Mazari, Abdelhamid Djeffal
Published: 2022
Sentiment analysis of Tunisian dialects: Linguistic ressources and experiments
Salima Medhaffar, Fethi Bougares, Yannick Estève, Lamia Hadrich-Belguith
Published: 2017
Supervised classification of languages used by moroccans in social networks
Otman Moussaoui, Yacine El Younoussi, Chaimae Azroumahli
Published: 2022
Share