基于Mahout库的K-Means聚类方法对肝脏疾病的加速和聚类

Tariq Bin Samer, Cahyo Darujati
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引用次数: 0

摘要

对肝脏疾病进行评估,在大数据环境应用中进行观察和聚类。然而,由于肝病是一种常见病,全球对此类病例的认识可能危及生命,因此避免和研究的冲动必须是必不可少的。并行计算的思想是在k均值方法的基础上建立起来的。利用MapReduce框架完成多节点数据处理,并给出了MapReduce K-Means方法的解决方案。最终目标是建立允许检查每个实体并将其分配到特定集群的集群。这些算法旨在加速计算,减少必须计算的庞大数据量,并提高算术运算的效率。理论分析与实验评价相结合具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acceleration and Clustering of Liver Disorder Using K-Means Clustering Method with Mahout’s Library
Evaluation of liver disorders was performed to observed and clustered in Big Data environment applications. However, since liver disorder is a common illness, global awareness of such cases can be life threatening, therefore the urge to avoid and study must be essential. The idea of parallel computing is established on the basis of the K-means method. The MapReduce framework is used to complete multi-node data processing, and a solution to the MapReduce K-Means method is given. The ultimate goal is to establish clusters that allow each entity to be examined and assigned to a certain cluster. These algorithms are designed to accelerate computations, reduce the volume of enormous data that must be computed, and improve the efficiency of arithmetic operations. The combination of theoretical analysis and experimental evaluation is very significant.
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