Big Data for Health Care Analytics using Extreme Machine Learning Based on Map Reduce

A large volume of datasets is available in various fields that are stored to be somewhere which is called big data. Big Data healthcare has clinical data set of every patient records in huge amount and they are maintained by Electronic Health Records (EHR). More than 80 % of clinical data is the uns...

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Vydáno v:International journal of engineering and advanced technology Ročník 9; číslo 3; s. 2758 - 2762
Hlavní autoři: Karuppan, Sivakumar, Nithya, N. S., Ondimuthu, Revathy
Médium: Journal Article
Jazyk:angličtina
Vydáno: 28.02.2020
ISSN:2249-8958, 2249-8958
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Shrnutí:A large volume of datasets is available in various fields that are stored to be somewhere which is called big data. Big Data healthcare has clinical data set of every patient records in huge amount and they are maintained by Electronic Health Records (EHR). More than 80 % of clinical data is the unstructured format and reposit in hundreds of forms. The challenges and demand for data storage, analysis is to handling large datasets in terms of efficiency and scalability. Hadoop Map reduces framework uses big data to store and operate any kinds of data speedily. It is not solely meant for storage system however conjointly a platform for information storage moreover as processing. It is scalable and fault-tolerant to the systems. Also, the prediction of the data sets is handled by machine learning algorithm. This work focuses on the Extreme Machine Learning algorithm (ELM) that can utilize the optimized way of finding a solution to find disease risk prediction by combining ELM with Cuckoo Search optimization-based Support Vector Machine (CS-SVM). The proposed work also considers the scalability and accuracy of big data models, thus the proposed algorithm greatly achieves the computing work and got good results in performance of both veracity and efficiency.
ISSN:2249-8958
2249-8958
DOI:10.35940/ijeat.C5808.029320