基于k近邻算法的营养治疗患者特征数据分类

I. G. S. M. Diyasa, A. Prayogi, I. Purbasari, A. Setiawan, Sugiarto, Prismahardi Aji Riantoko
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引用次数: 0

摘要

对于一家从事服务和健康行业的公司来说,了解消费者的特点对公司发展和生产合适的产品至关重要。确定患者的营养治疗仍然具有挑战性,许多患者的健康治疗对每个患者来说仍然是适当和准确的。为了获得适合患者的治疗数据,需要收集患者数据并与患者面谈。然而,为了获得适当的进一步治疗,系统必须处理过去的患者数据,从而获得更准确的后续治疗。本研究使用的方法是使用K近邻算法(K- nearest Neighbors, K- nn)计算训练数据和K点的值。目标是为消费者确定治疗套餐菜单的建议。k近邻算法是实现本系统开发所使用的算法之一。使用欧几里得距离函数计算患者特征和数据距离可以产生一个类别,用于确定每个患者更准确和良好的营养治疗。在训练数据与测试数据3:1对比的测试场景中,在所有测试场景的结果中,程序准确率最高,达到88%,准确率达到91%,召回率达到95%
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Data Classification of Patient Characteristics Based on Nutritional Treatment Using the K-Nearest Neighbors Algorithm
For a company engaged in the service and health sector, it is essential to read consumers' characteristics to develop the company and produce the right products. It is still challenging to determine patients' nutritional treatment, with many patients' healthy treatment remained appropriate and accurate for each patient. Patient data collection and patient interviews are needed to obtain suitable treatment data for the patient. However, to get appropriate further treatment, a system must process past patient data, resulting in more accurate follow-up treatments. The method used in this study is to calculate the value of the training data and K point with the K-Nearest Neighbors (K-NN) Algorithm. The goal is to determine the treatment package menu recommendations for consumers. The K-Nearest Neighbors algorithm is one of the algorithms used for the implementation of this system development. The patient characteristics and data distance calculation using the euclidean distance function can produce a category used to determine a more accurate and good nutritional treatment for each patient. The scenario in the test with a comparison of training data and test data 3: 1 has the highest program accuracy reaching 88%, precision reaching 91%, and recall going 95% among all the results of the test scenario
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