Litcius/Paper detail

Improving Arabic Text Categorization Using Transformer Training Diversification

Shammur Absar Chowdhury, Ahmed Abdelalí, Kareem Darwish, Jung Soon-Gyo, Joni Salminen, Bernard J. Jansen

202027 citations

Abstract

Automatic categorization of short texts, such as news headlines and social media posts, has many applications ranging from content analysis to recommendation systems. In this paper, we use such text categorization i.e., labeling the social media posts to categories like ‘sports’, ‘politics’, ‘human-rights’ among others, to showcase the efficacy of models across different sources and varieties of Arabic. In doing so, we show that diversifying the training data, whether by using diverse training data for the specific task (an increase of 21% macro F1) or using diverse data to pre-train a BERT model (26% macro F1), leads to overall improvements in classification effectiveness. In our work, we also introduce two new Arabic text categorization datasets, where the first is composed of social media posts from a popular Arabic news channel that cover Twitter, Facebook, and YouTube, and the second is composed of tweets from popular Arabic accounts. The posts in the former are nearly exclusively authored in modern standard Arabic (MSA), while the tweets in the latter contain both MSA and dialectal Arabic.

Topics & Concepts

CategorizationModern Standard ArabicArabicSocial mediaComputer scienceNatural language processingMacroArtificial intelligenceDiversification (marketing strategy)World Wide WebLinguisticsMarketingProgramming languageBusinessPhilosophyText and Document Classification TechnologiesTopic ModelingSpam and Phishing Detection
Improving Arabic Text Categorization Using Transformer Training Diversification | Litcius