Rule Based System for Better Prediction of Diabetes

R. Karthikeyan, P. Geetha, E. Ramaraj
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引用次数: 7

Abstract

A rule-based system [RBS] is used in the field of artificial intelligence to store, manipulate, and interpret the information in various ways. It is also a combination of human knowledge and machine intelligence together to get the exact information in the field of medicine. Today number of medical data’s is generated based on patient information in various formats with missing values. In existing data mining techniques such as clustering and classification, the role of missing values plays vital role for the prediction of disease. By considering missing values may cause wrong prediction of disease in humans. To improve the accuracy of prediction in the medical data set, this paper proposes the Rule Based Classification (RBC) technique by considering the best classifier. The concept proposed RBC technique implements diabetic data set. The major drawback of diabetes is, its symptoms are not common in all humans and they have to undergo diabetic testing. Rule-based systems can be adapted and applied to a large kind of problems. RBC technique can be used to predict diabetes in patients by applying various steps, facts, symptoms to make suitable rules and decide the best rule related to disease. This paper also provides the comparative analysis of various classifiers pertaining to diabetic data set.
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基于规则的糖尿病预测系统
基于规则的系统[RBS]用于人工智能领域,以各种方式存储、操作和解释信息。它也是人类知识和机器智能的结合,共同获得医学领域的准确信息。目前,许多医疗数据是基于各种格式的患者信息生成的,这些信息缺少值。在现有的聚类和分类等数据挖掘技术中,缺失值的作用对疾病的预测起着至关重要的作用。通过考虑缺失值可能导致对人类疾病的错误预测。为了提高医疗数据集的预测精度,本文提出了基于规则的分类(RBC)技术,考虑了最佳分类器。提出RBC技术实现糖尿病数据集的概念。糖尿病的主要缺点是,它的症状在所有人身上并不常见,他们必须接受糖尿病检测。基于规则的系统可以适应并应用于各种各样的问题。RBC技术可以应用各种步骤、事实、症状来预测糖尿病患者,制定合适的规则,并确定与疾病相关的最佳规则。本文还提供了与糖尿病数据集有关的各种分类器的比较分析。
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