Multimodal Religiously Hateful Social Media Memes Classification based on Textual and Image Data

Author:

Hamza Ameer1,Javed Abdul Rehman2,Iqbal Farkhund3,Yasin Amanullah4,Srivastava Gautam5,Połap Dawid6,Gadekallu Thippa Reddy7,Jalil Zunera8

Affiliation:

1. Department of Creative Technologies, Air University, Pakistan

2. Department of Electrical and Computer Engineering Lebanese American University, Lebanon

3. College of Technological Innovation Zayed University, UAE

4. Department of Creative Technologies Air University, Pakistan

5. Dept. of Math and Computer Science Brandon University, Canada and Research Centre for Interneural Computing China Medical University, Taiwan and Dept. of Computer Science and Math Lebanese American University, Lebanon

6. Faculty of Applied Mathematics Silesian University of Technology, Poland

7. Department of Electrical and Computer Engineering Lebanese American University, Lebanon and College of Information Science and Engineering Jiaxing University, China and Division of Research and Development Lovely Professional University, India

8. Department of Computer Science National University of Computer and Emerging Sciences, Pakistan

Abstract

Multimodal hateful social media meme detection is an important and challenging problem in the vision-language domain. Recent studies show high accuracy for such multimodal tasks due to datasets that provide better joint multimodal embedding to narrow the semantic gap. Religiously hateful meme detection is not extensively explored among published datasets. While there is a need for higher accuracy on religiously hateful memes, deep learning-based models often suffer from inductive bias. This issue is addressed in this work with the following contributions. First, a religiously hateful memes dataset is created and published publicly to advance hateful religious memes detection research. Over 2000 meme images are collected with their corresponding text. The proposed approach compares and fine-tunes VisualBERT pre-trained on the Conceptual Caption (CC) dataset for the downstream classification task. We also extend the dataset with the Facebook hateful memes dataset. We extract visual features using ResNeXT-152 Aggregated Residual Transformations based Masked Regions with Convolutional Neural Networks (R-CNN) and Bidirectional Encoder Representations from Transformers (BERT) uncased for textual encoding for the early fusion model. We use the primary evaluation metric of an Area Under the Operator Characters Curve (AUROC) to measure model separability. Results show that the proposed approach has a higher AUCROC score of \(78\% \) , proving the model’s higher separability performance and an accuracy of \(70\% \) . It shows comparatively superior performance considering dataset size and against ensemble-based machine learning approaches.

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

Reference79 articles.

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