The primordial role of Business Intelligence and Real Time Analysis for Big Data : Finance-based case study
Keywords:
Big data, Business intelligence, Real time analysis, characteristics, relationshipsAbstract
This study is about big data and its relationships with business intelligence and real time analysis. Few studies have studied this relation and fewer the parameters and variables of the characteristics and relations. In this study, this is presented in the literature review then forthe research method, it is a questionnaire to finance sector leaders managers –unit of analysis with Lickert scale, yes and no questions and comments about the characteristics and relations of big data with real time analysis and business intelligence. The analysis uses SPSS for windows and NVIVO 12 for the quantitative and qualitative analysis. The results of the analysis present concrete and concise models in which big data is in relation to real time analysis and business intelligence. It also provides a thematic analysis leading to the development of a new framework model that lead to the definition of the characteristics and relationships. There are varioustheoretical and managerial implications for the big data management and possible finance sector. The future research is to scale the questionnaire to a survey basis, to modify the origins of the questions to a complete Lickert scale and to elaborate on new links with big data using the new conceptual framework.References
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