基于Hadoop的模糊逻辑和大数据技术发现农村人口营养缺乏和疾病模式

Sadia Yeasmin, Muhammad Abrar Hussain, Noor Yazdani Sikder, R. Rahman
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引用次数: 2

摘要

几十年来,人们对确定孟加拉国人民营养需求的工具有很高的需求,因为孟加拉国的营养不足率在世界各国中是惊人的。这一分析的重点是孟加拉国不同地区营养不良引起的疾病的差异。在64个地区中,没有一个地区的居民养成了适当的营养饮食习惯。低收入和知识匮乏是诱发因素,农村地区的情况更为严重。本研究在大数据模型中处理了一个面向大数据集的分布式枚举框架。模糊逻辑具有对营养问题建模的能力,通过这种方式帮助人们计算食物卡路里与用户个人资料之间的适用性。本研究采用基于地图约简的k -近邻(mrK-NN)分类器对数据进行分类。我们在Hadoop上运用模糊逻辑和大数据分析设计了一个关于饮食习惯、食物营养和疾病的平衡模型,特别是针对农村人群。
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Finding Nutritional Deficiency and Disease Pattern of Rural People Using Fuzzy Logic and Big Data Techniques on Hadoop
Over the decades there is a high demand of a tool to identify the nutritional needs of the people of Bangladesh since it has an alarming rate of under nutrition among the countries of the world. This analysis has focused on the dissimilarity of diseases caused by malnutrition in different districts of Bangladesh. Among the 64 districts, there is no single one found where people have grown proper nutritional food habit. Low income and less knowledge are the triggering factors and the case is worse in the rural areas. In this research, a distributed enumerating framework for large data set is processed in big data models. Fuzzy logic has the ability to model the nutrition problem, in the way helping people to calculate the suitability between food calories and user’s profile. A Map Reduce-based K-nearest neighbor (mrK-NN) classifier has been applied in this research in order to classify data. We have designed a balanced model applying fuzzy logic and big data analysis on Hadoop concerning food habit, food nutrition and disease, especially for the rural people.
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