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An intelligent model for prediction of brucellosis

机译:一种预测布鲁氏菌病的智能模型

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摘要

Malta fever or brucellosis is one of the most common diseases of humans and animals. Bacteria from Brucella family can infect most living creatures like cows, sheep, goats, humans, horses, dogs and the like. This disease is important because humans are constantly in contact with livestock or animal products such as dairy products, animal meat, etc. Data mining is the process of extracting hidden information or patterns and relationships in a large volume of data in one or more large databases. Such data can be used to increase revenue and reduce costs. By data mining techniques, it is possible to use prognostic models to detect livestock with brucellosis and to reduce the complications of the disease. The purpose of this study was to evaluate the accuracy of prediction and diagnosis of livestock with brucellosis disease using neural network algorithm and decision tree. To perform this study, appropriate MATLAB software was used. Investigations indicated that the decision tree provided predictions with higher accuracy.
机译:马耳他热或布鲁氏菌病是人类和动物最常见的疾病之一。来自Brucella家族的细菌可以感染奶牛,绵羊,山羊,人,马,狗等生活的最生物。这种疾病是重要的,因为人类经常与牲畜或动物产品接触,例如乳制品,动物肉等。数据挖掘是在一个或多个大型数据库中提取大量数据中的隐藏信息或模式和关系的过程。这些数据可用于增加收入并降低成本。通过数据挖掘技术,可以使用预后模型来检测牲畜的牲畜,并降低疾病的并发症。本研究的目的是评估利用神经网络算法和决策树评估牲畜预测和诊断的准确性。要执行本研究,使用适当的MATLAB软件。调查表明,决策树以更高的准确性提供了预测。

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