应用数据挖掘算法 Apriori 寻找幼儿营养状况之间的关系模式

Evi Nurmalasari, Utami Aryanti, Tonton Taufik Rachman
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引用次数: 0

摘要

幼儿营养不良会导致严重的健康问题、发育迟缓和智力下降。因此,了解幼儿营养状况之间的关系模式非常重要,尤其是在营养不良的情况下,以获得有关营养共存问题的可能风险的信息。本研究的目的是利用 apriori 算法进行数据挖掘,找出营养状况之间的关系模式,并根据支持度、置信度和验证度与提升率的值得出关联规则的准确度。这项研究的结果有望产生有助于预防和治疗营养不良的信息,以及适当的营养干预措施。使用先验算法法分析和执行数据。手工计算使用 Microsoft Excell,精确计算使用 python 编程。将对五岁以下儿童营养状况,尤其是营养不良状况的数据进行处理,以找到关联关系模式。确定最小支持值为 0.1 或 10%,最小置信度为 0.5 或 50%。研究以营养状况的关联关系模式(特别是营养不良状况(体重不足?发育迟缓))的形式产生关联规则,支持度为 0.25 或 25%,置信度为 0.57 或 57%。这些规则达到了最小支持度和最小置信度值,并通过提升比验证,其值大于 1。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Penerapan Data Mining Algoritma Apriori untuk Menemukan Pola Hubungan Status Gizi Balita
Malnutrition of toddlers can cause severely health problems, growth retardation, and decreased intelligence. Therefore, it is important to know the pattern of the relationship between the nutritional status of toddlers, especially against the condition of malnutrition to get information about the possible risk of nutritional coexistence problems. The purpose of this research is to apply data mining using the apriori algorithm in finding patterns of relationships betweennutritional status and to produce an accuracy level of association rules based on the value of support, confidence, and validation with the lift ratio. The results of this study are expected to generate information that can help prevent and treat malnutrition, as well as appropriate nutrition interventions. Analysis and implementation of data using the a priori algorithm method. Manual calculations are carried out using Microsoft Excell and accurate calculations with python programming. Data on the nutritional status of children under five, especially undernourished conditions will be processed to find patterns of association relationships. Determined the minimum support value of 0.1 or 10% and the minimum confidence of 0.5 or 50%. The research produces association rules in the form of association relationship patterns of nutritional status specifically malnutrition conditions (Underweight?Stunting ) with a support of 0.25 or 25% and confidence 0.57 or 57%. The rules have met the minimum support and minimum confidence values and have been validated by the lift ratio with a value > 1.
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