准确性测量和决策的Naïve贝叶斯和前向链法确定营养不良的原因和症状

Muhammad Ibtasam
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引用次数: 0

摘要

营养不良的特征是由社会、饮食、政治、粮食安全问题引起的肌肉衰弱和认知差异。它表现为许多潜在的症状,如疲劳,虚弱,微量营养素缺乏,体重减轻,肌肉量减少的明显症状。在发展中国家,每五个儿童中就有一个营养不良。目的:政策和规划的制定需要流行的事实来分类最普遍的原因。诊断工具和计算机建模已经彻底改变了健康科学的世界。许多算法公式可以根据以前的情况表来帮助预测疾病的预后。方法/研究设计/方法:Naïve贝叶斯提供后验概率值,给出了对整个样本集的成员的分析。正向链用IF和THEN方法给出逻辑结论。结果/发现:Naïve贝叶斯提供了88%的准确率,而正向链的准确率为85%。新颖性/原创性/价值:在本研究中,Naïve贝叶斯算法方法与正向链系统相结合,提供了对营养不良原因的高度精确测量。
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Accuracy Measurements and Decision Making by Naïve Bayes and Forward Chaining Method to Identify the Malnutrition Causes and Symptoms
Malnutrition is characterized as muscle weakening and cognitive disparity caused by social, dietary, political, food security issues. It appears as many underlying symptoms like fatigue, weakness, micronutrient deficiencies, weight loss to apparent symptoms of muscle mass reduction. Every 1 in 5 children is malnourished in developing countries. Purpose: Policies and program formulation require prevalence facts to classify the most prevalent cause. Diagnostic tools and computer modeling have revolutionized the world of health sciences. Much algorithmic formulation can help to predict the prognosis of diseases based on the previous fact sheets. Methods/Study design/approach: Naïve Bayes provides the posterior probability value that gives an analysis of the member with the whole sample set. Forward chaining gives the logistic conclusion with IF and THEN approach. Result/Findings: Naïve Bayes provided high accuracy of 88% as compared to 85% forward chaining. Novelty/Originality/Value: In this study, the Naïve Bayes algorithm approach is coupled with the forward chaining system to provide a highly accurate measurement of the cause of malnutrition.
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