Abstract

Social media and other platforms on Internet are commonly used to communicate and generate information. In many cases, this information is not validated, which makes it difficult to use and analyze. Although there exist studies focused on information validation, most of them are limited to specific scenarios. Thus, a more general and flexible architecture is needed, that can be adapted to user/developer requirements and be independent of the social media platform. We propose a framework to automatically and in real-time perform credibility analysis of posts on social media, based on three levels of credibility: Text , User , and Social . The general architecture of our framework is composed of a front-end, a light client proposed as a web plug-in for any browser; a back-end that implements the logic of the credibility model; and a third-party services module. We develop a first version of the proposed system, called T-CREo ( T witter CRE dibility analysis framew o rk) and evaluate its performance and scalability. In summary, the main contributions of this work are: the general framework design; a credibility model adaptable to various social networks, integrated into the framework; and T-CREo as a proof of concept that demonstrates the framework applicability and allows evaluating its performance for unstructured information sources; results show that T-CREo qualifies as a highly scalable real-time service. The future work includes the improvement of T-CREo implementation, to provide a robust architecture for the development of third-party applications, as well as the extension of the credibility model for considering bots detection, semantic analysis and multimedia analysis.

Highlights

  • Nowadays, social media generates an immense amount of information, since they are what people mostly use to share and read about a wide variety of topics

  • Cardinale et al.: T-CREo: Twitter Credibility Analysis Framework a more general and flexible architecture is needed, that can be adapted to user/developer’s requirements and be independent of the social media platform

  • We describe the general architecture of the framework and demonstrate its applicability for unstructured information sources, taking as reference Twitter, which is one of the most used among social media networks

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Summary

Introduction

Social media generates an immense amount of information, since they are what people mostly use to share and read about a wide variety of topics. Existing works are limited to be applicable to analysis of credibility on specific scenarios (e.g., for a specific social platform, for a particular application) These works differ in the characteristics taken into account to calculate credibility (e.g., attributes of the posts or of users who posted them, the text of the posts, user social impact) and in the extraction techniques used to gather the information to feed the credibility models (i.e., web scraping or API).

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