DeBASE 2016 - Workshop on big Data and Business AnalyticS Ecosystems (DeBASE 2016)
Topics/Call fo Papers
The notion of big data and its application in driving organizational decision making has attracted enormous attention over the past few years. As the label itself indicates, big data refers to large volumes of data generated and made available online and in digital media ecosystems. Associated with the notion of big data are aspects such as the diversity of data, the frequency by which it is updated, and the speed at which it grows. Companies are realizing that the data they own and the way they use them can differentiate them from competition, and even provide them with a competitive edge. Thus, todays companies try to collect and process as much data as possible. Big data and business analytics are also challenging existing modes of business and well-established companies. The need to harness the potential of rapidly expanding data volume, velocity, and variety, has seen a significant evolution of techniques and technologies for data storage, analysis, and visualization. Yet, there is limited understanding of how organizations need to change to embrace these technological innovations, and the business shifts they entail. As big data tools and applications spread, they will inevitably change long-standing ideas about decision making, management practices, and most importantly competitive strategy formulation. But as with any major change, the challenge of becoming a big data-driven enterprise can be enormous. Nevertheless, it’s a transition that executives need to navigate through, with limited empirical knowledge to guide their decisions. The purpose of this workshop is to shed some light on how big data and business analytics tools are reshaping contemporary companies. The focus is on how companies should optimally deploy and exploit big data as part of their competitive strategies, as well as how the analytic methods, tools, and techniques are best utilized for supporting business operations. The workshop will be revolved on themes such as how big data are effectively leveraged in a range of contexts and industries (e.g. technology, retail, oil and gas, healthcare, telecommunications), and what critical factors drive successful diffusion. Papers that address topics on how information sources, technological infrastructure, human skills and knowledge, organizational/team structures, and management practices coalesce to achieve desired ends, are of increased interest. Furthermore, outcomes that demonstrate the organizational impact of big data and business analytics in terms of competitive performance, innovativeness, increased agility, and market capitalizing competence are encouraged. Emphasis will be placed on interdisciplinary papers that bridge the domains of organizational science, information systems strategic management, information science, marketing, and computer science. In addition, the workshop seeks to address the novel digital business strategies that emerge as part of these new technologies, and particularly the entrepreneurial wave and start-up business models that transpire.
Despite the hype surrounding big data, the aforementioned predicaments still remain largely unexplored, severely hampering the business potential of big data and business analytics. Theworkshop aims to add in this direction and therefore welcomes quantitative, qualitative, and mixed methods papers, as well as reviews, conceptual papers, and theory development papers. Especially concerning the theory development papers, we highly encourage authors to explore how information systems, information management, and strategic management theories can be used or extended to explain big data and business analytics-related phenomena.
Topics of interest
Suggested topics include, but are not limited to big data and business analytics:
Emerging concepts and methodologies on big data and analytics
Big data and management
Organizational learning and innovation from big data and business analytics
Data-driven competitive advantage
Human resource management in the data-driven enterprise
Big data digital business models
Proactive strategy formulation from big data analytics
Data and text mining for business analytics
Big data and analytics to create business value
Social media analytics for business
Data quality improvement for business analytics
Big data and its impact on business strategy-formulation
Digital ecosystem big data
Despite the hype surrounding big data, the aforementioned predicaments still remain largely unexplored, severely hampering the business potential of big data and business analytics. Theworkshop aims to add in this direction and therefore welcomes quantitative, qualitative, and mixed methods papers, as well as reviews, conceptual papers, and theory development papers. Especially concerning the theory development papers, we highly encourage authors to explore how information systems, information management, and strategic management theories can be used or extended to explain big data and business analytics-related phenomena.
Topics of interest
Suggested topics include, but are not limited to big data and business analytics:
Emerging concepts and methodologies on big data and analytics
Big data and management
Organizational learning and innovation from big data and business analytics
Data-driven competitive advantage
Human resource management in the data-driven enterprise
Big data digital business models
Proactive strategy formulation from big data analytics
Data and text mining for business analytics
Big data and analytics to create business value
Social media analytics for business
Data quality improvement for business analytics
Big data and its impact on business strategy-formulation
Digital ecosystem big data
Other CFPs
- 7th Workshop on Business and IT Alignment (BITA 2016)
- 8th Workshop on Applications of Knowledge-Based Technologies in Business (AKTB 2016)
- 2nd International Workshop on Digital Enterprise Engineering and Architecture
- Third International Conference on Engineering, Science, Business and Management 2016
- 2016 International Workshop on Security Protocols
Last modified: 2016-01-17 19:05:06