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MULTI MODEL DATA MINING APPROACH FOR HEART FAILURE PREDICTION

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Author :  Priyanka

Affiliation :  RVCE, Bengaluru

Country :  India

Category :  Data Mining

Volume, Issue, Month, Year :  Volume(6), no(5), September, 2016

Abstract :


Developing predictive modelling solutions for risk estimation is extremely challenging in health-care informatics. Risk estimation involves integration of heterogeneous clinical sources having different representation from different health-care provider making the task increasingly complex. Such sources are typically voluminous, diverse, and significantly change over the time. Therefore, distributed and parallel computing tools collectively termed big data tools are in need which can synthesize and assist the physician to make right clinical decisions. In this work we propose multi-model predictive architecture, a novel approach for combining the predictive ability of multiple models for better prediction accuracy. We demonstrate the effectiveness and efficiency of the proposed work on data from Framingham Heart study. Results show that the proposed multi-model predictive architecture is able to provide better accuracy than best model approach. By modelling the error of predictive mode

Keyword :  Multi model prediction, Framingham data, Hadoop, Clustering and Classification.

Journal/ Proceedings Name :  International Journal of Data Mining & Knowledge Management Process (IJDKP)

URL :  http://aircconline.com/ijdkp/V6N5/6516ijdkp03.pdf

User Name : anikajosi
Posted 27-12-2016 on 10:02:37 AEDT



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