Anonymous Real-Time Analytics Monitoring Solution for Decision Making Supported by Sentiment Analysis
Gildásio Antonio de Oliveira Júnior,
Robson de Oliveira Albuquerque,
César Augusto Borges de Andrade,
Rafael Timóteo de Sousa,
Ana Lucila Sandoval Orozco,
Luis Javier García Villalba
Affiliations
Gildásio Antonio de Oliveira Júnior
Cyber Security INCT Unit 6, Laboratory for Decision-Making Technologies (LATITUDE), Department of Electrical Engineering (ENE), Faculty of Technology, University of Brasília (UnB), 70910-900 Brasília-DF, Brazil
Robson de Oliveira Albuquerque
Cyber Security INCT Unit 6, Laboratory for Decision-Making Technologies (LATITUDE), Department of Electrical Engineering (ENE), Faculty of Technology, University of Brasília (UnB), 70910-900 Brasília-DF, Brazil
César Augusto Borges de Andrade
Cyber Security INCT Unit 6, Laboratory for Decision-Making Technologies (LATITUDE), Department of Electrical Engineering (ENE), Faculty of Technology, University of Brasília (UnB), 70910-900 Brasília-DF, Brazil
Rafael Timóteo de Sousa
Cyber Security INCT Unit 6, Laboratory for Decision-Making Technologies (LATITUDE), Department of Electrical Engineering (ENE), Faculty of Technology, University of Brasília (UnB), 70910-900 Brasília-DF, Brazil
Ana Lucila Sandoval Orozco
Cyber Security INCT Unit 6, Laboratory for Decision-Making Technologies (LATITUDE), Department of Electrical Engineering (ENE), Faculty of Technology, University of Brasília (UnB), 70910-900 Brasília-DF, Brazil
Luis Javier García Villalba
Group of Analysis, Security and Systems (GASS), Department of Software Engineering and Artificial Intelligence (DISIA), Faculty of Computer Science and Engineering, Office 431, Universidad Complutense de Madrid (UCM), Calle Profesor José García Santesmases 9, Ciudad Universitaria, 28040 Madrid, Spain
Currently, social networks present information of great relevance to various government agencies and different types of companies, which need knowledge insights for their business strategies. From this point of view, an important technique for data analysis is to create and maintain an environment for collecting data and transforming them into intelligence information to enable analysts to observe the evolution of a given topic, elaborate the analysis hypothesis, identify botnets, and generate data to aid in the decision-making process. Focusing on collecting, analyzing, and supporting decision-making, this paper proposes an architecture designed to monitor and perform anonymous real-time searches in tweets to generate information allowing sentiment analysis on a given subject. Therefore, a technological structure and its implementation are defined, followed by processes for data collection and analysis. The results obtained indicate that the proposed solution provides a high capacity to collect, process, search, analyze, and view a large number of tweets in several languages, in real-time, with sentiment analysis capabilities, at a low cost of implementation and operation.