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首页> 外文期刊>Indian Journal of Science and Technology >An Efficient Clustering Algorithm for Predicting Diseases from Hemogram Blood Test Samples
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An Efficient Clustering Algorithm for Predicting Diseases from Hemogram Blood Test Samples

机译:一种从血流图血液样本中预测疾病的有效聚类算法

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This research work primarily focuses on predicting diseases from the hemogram blood test data set by using data mining techniques. In this research, a new clustering algorithm which is named as weight based k-means algorithm is developed for identifying the leukemia, inflammatory, bacterial or viral infection, HIV infection and pernicious anaemia diseases from the hemogram blood test samples data set. The newly proposed weight based k-means algorithm efficiency is evaluated with Fuzzy C-means and K-means clustering algorithms. These algorithms performances are evaluated by using the cluster accuracy, error rate and execution time. From the results investigation, it is known that the proposed weight based k-means algorithm performance is better than the other algorithms.
机译:这项研究工作主要集中在通过使用数据挖掘技术从血脂血液测试数据集中预测疾病。在这项研究中,开发了一种新的聚类算法,称为基于权重的k均值算法,用于从血样血液测试样本数据集中识别白血病,炎症,细菌或病毒感染,HIV感染和恶性贫血疾病。通过模糊C均值和K均值聚类算法评估了新提出的基于权重的k均值算法效率。这些算法的性能通过使用群集精度,错误率和执行时间进行评估。从结果调查中可以看出,所提出的基于权重的k均值算法性能优于其他算法。

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