Classification of potential blood donors using machine learning algorithms approach

Merinda Lestandy, Lailis Syafa’ah, Amrul Faruq
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引用次数: 6

Abstract

Blood donation is the process of taking blood from someone used for blood transfusions. Blood type, sex, age, blood pressure, and hemoglobin are blood donor criteria that must be met and processed manually to classify blood donor eligibility. The manual process resulted in an irregular blood supply because blood donor candidates did not meet the criteria. This study implements machine learning algorithms includes kNN, naïve Bayes, and neural network methods to determine the eligibility of blood donors. This study used 600 training data divided into two classes, namely potential and non-potential donors. The test results show that the accuracy of the neural network is 84.3 %, higher than kNN and naïve Bayes, respectively of 75 % and 84.17 %. It indicates that the neural network method outperforms comparing with kNN and naïve Bayes.
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利用机器学习算法对潜在献血者进行分类
献血是指从某人身上抽取血液用于输血的过程。血型、性别、年龄、血压和血红蛋白是献血者必须满足的标准,并通过人工处理来划分献血者资格。由于献血者候选人不符合标准,人工处理过程导致血液供应不正常。本研究采用机器学习算法,包括 kNN、天真贝叶斯和神经网络方法来确定献血者的资格。本研究使用了 600 个训练数据,分为两类,即潜在献血者和非潜在献血者。测试结果表明,神经网络的准确率为 84.3%,分别高于 kNN 和 naïve Bayes 的 75% 和 84.17%。这表明神经网络方法优于 kNN 和天真贝叶斯。
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6
审稿时长
6 weeks
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