Data Mining with Big Data e-Health Service Using Map Reduce

Introducing the new knowledge of Big Data for belief apprehension of large-volume, complex, growing data sets with several autonomous sources. HACE theorem that characterizes the features of big data revolution and perform the operation in data mining perspective. Big Data e-Health Service application has promised to transform the whole healthcare heart disease process to become more efficient, less expensive and higher quality. This application involves data-driven model demand-driven aggregation of information sources. Big Data is transforming healthcare, business, as e-Health heart disease becomes one of key driving factors during the innovation process. Look into BDeHS (Big Data e-Health Service) to fulfil the Big Data applications in the e-Health service domain. Existing Data Mining technologies such cannot be simply applied to e-Health services directly. Our design of the BDeHS for heart disease that supplies data operation management capabilities and e-Health meaningful usages.

[1]  Johan Bollen,et al.  Twitter mood predicts the stock market , 2010, J. Comput. Sci..

[2]  Geoff Hulten,et al.  Mining high-speed data streams , 2000, KDD '00.

[3]  K. Sivakumar,et al.  Collective mining of Bayesian networks from distributed heterogeneous data , 2003, Knowledge and Information Systems.

[4]  George Karypis,et al.  Algorithms for mining the evolution of conserved relational states in dynamic networks , 2011, 2011 IEEE 11th International Conference on Data Mining.

[5]  Suh-Yin Lee,et al.  Efficient algorithms for influence maximization in social networks , 2012, Knowledge and Information Systems.