Center for Complexity and Self-Management of Chronic Disease
(CSCD): Core 2: Methods and Analytics Progress (2016-2017)
The main 2016-2017 accomplishments of the Methods and Analytics core include:
I.Theoretical Foundation of Compressive Big Data Analytics
Modern scientific inquiries require significant data-driven evidence and trans-disciplinary
expertise to extract valuable information and gain actionable knowledge about natural
processes. Effective evidencebased decisions require collection, processing and interpretation
of vast amounts of complex data. The Moore's and Kryder's laws of exponential increase of
computational power and information storage, respectively, dictate the need for rapid
trans-disciplinary advances, technological innovation and effective mechanisms for managing
and interrogating Big Healthcare Data. In this article, we review important aspects of
Big Data analytics and discuss fundamental questions like: What are the challenges and
opportunities associated with this biomedical, social, and healthcare data avalanche?
Are there innovative statistical computing strategies to represent, model, analyze and
interpret Big heterogeneous data? In
this study (DOI: 10.7243/2053-7662-4-3),
we present the foundation of a new compressive big
data analytics (CBDA) framework for representation, modeling and inference of large,
complex and heterogeneous datasets. Finally, we consider specific directions likely to
impact the process of extracting information from Big healthcare data, translating that
information to knowledge, and deriving appropriate actions.