Visible to the public Towards a Set Theoretical Approach to Big Data Analytics

TitleTowards a Set Theoretical Approach to Big Data Analytics
Publication TypeConference Paper
Year of Publication2014
AuthorsMukkamala, R.R., Hussain, A., Vatrapu, R.
Conference NameBig Data (BigData Congress), 2014 IEEE International Congress on
Date PublishedJune
KeywordsAnalytical models, Big Data, Big Social Data, Computational Social Science, conceptual model, Data analysis, Data models, Data Science, Facebook, Facebook page, fast fashion company, formal methods, formal model, graph theoretical approach, H&M, Mathematical model, Media, relational sociology, set theoretical approach, set theory, social big data analytics, social data analytic tool, Social Data Analytics, social network analysis, social networking (online), SODATO, tagging, text analysis, text sentiment analysis
Abstract

Formal methods, models and tools for social big data analytics are largely limited to graph theoretical approaches such as social network analysis (SNA) informed by relational sociology. There are no other unified modeling approaches to social big data that integrate the conceptual, formal and software realms. In this paper, we first present and discuss a theory and conceptual model of social data. Second, we outline a formal model based on set theory and discuss the semantics of the formal model with a real-world social data example from Facebook. Third, we briefly present and discuss the Social Data Analytics Tool (SODATO) that realizes the conceptual model in software and provisions social data analysis based on the conceptual and formal models. Fourth and last, based on the formal model and sentiment analysis of text, we present a method for profiling of artifacts and actors and apply this technique to the data analysis of big social data collected from Facebook page of the fast fashion company, H&M.

DOI10.1109/BigData.Congress.2014.96
Citation Key6906838