CLJan 22, 2021

BERT Transformer model for Detecting Arabic GPT2 Auto-Generated Tweets

arXiv:2101.09345v1991 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the spread of false or auto-generated Arabic text on platforms like Twitter, which is an incremental contribution to bot detection in a specific language domain.

The paper tackled the problem of detecting Arabic text auto-generated by GPT-2 bots on social media, achieving an accuracy of up to 98% using a transfer learning model based on ARABERT and GPT2.

During the last two decades, we have progressively turned to the Internet and social media to find news, entertain conversations and share opinion. Recently, OpenAI has developed a ma-chine learning system called GPT-2 for Generative Pre-trained Transformer-2, which can pro-duce deepfake texts. It can generate blocks of text based on brief writing prompts that look like they were written by humans, facilitating the spread false or auto-generated text. In line with this progress, and in order to counteract potential dangers, several methods have been pro-posed for detecting text written by these language models. In this paper, we propose a transfer learning based model that will be able to detect if an Arabic sentence is written by humans or automatically generated by bots. Our dataset is based on tweets from a previous work, which we have crawled and extended using the Twitter API. We used GPT2-Small-Arabic to generate fake Arabic Sentences. For evaluation, we compared different recurrent neural network (RNN) word embeddings based baseline models, namely: LSTM, BI-LSTM, GRU and BI-GRU, with a transformer-based model. Our new transfer-learning model has obtained an accuracy up to 98%. To the best of our knowledge, this work is the first study where ARABERT and GPT2 were combined to detect and classify the Arabic auto-generated texts.

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