Beyond Text: Multimodal Credibility Assessment Approaches for Online User-Generated Content

Author:

Choudhary Monika1ORCID,Chouhan Satyendra Singh1ORCID,Rathore Santosh Singh2ORCID

Affiliation:

1. Department of Computer Science and Engineering, Malaviya National Institute of Technology Jaipur, 302017, India

2. Department of Computer Science and Engineering, ABV-Indian Institute of Information Technology and Management Gwalior, India

Abstract

User-Generated Content (UGC) is increasingly becoming prevalent on various digital platforms. The content generated on social media, review forums, and question-answer platforms impacts a larger audience and influences their political, social, and other cognitive abilities. Traditional credibility assessment mechanisms involve assessing the credibility of the source and the text. However, with the increase in how user content can be generated and shared (audio, video, images), multimodal representation of User-Generated Content has become increasingly popular. This paper reviews the credibility assessment of UGC in various domains, particularly identifying fake news, suspicious profiles, and fake reviews and testimonials, focusing on both textual content and the source of the content creator. Next, the concept of multimodal credibility assessment is presented, which also includes audio, video, and images in addition to text. After that, the paper presents a systematic review and comprehensive analysis of work done in the credibility assessment of UGC considering multimodal features. Additionally, the paper provides extensive details on the publicly available multimodal datasets for the credibility assessment of UGC. In the end, the research gaps, challenges, and future directions in assessing the credibility of multimodal user-generated content are presented.

Publisher

Association for Computing Machinery (ACM)

Reference188 articles.

1. Hongwei Wang, Fuzheng Zhang, Xing Xie, and Minyi Guo. Dkn: Deep knowledge-aware network for news recommendation. In World Wide Web Conference, pages 1835–1844, 2018.

2. Bill Yuchen Lin, Frank F Xu, Zhiyi Luo, and Kenny Zhu. Multi-channel bilstm-crf model for emerging named entity recognition in social media. In 3rd Workshop on Noisy User-generated Text, pages 160–165, 2017.

3. Exploiting user-generated content to enrich web document summarization;Nguyen Minh Tien;International Journal on Artificial Intelligence Tools,2017

4. An investigation of brand-related user-generated content on twitter;Liu Xia;Journal of Advertising,2017

5. Jane B Singer. User-generated visibility: Secondary gatekeeping in a shared media space. New media & society, 16(1):55–73, 2014.

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