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Breast cancer and liver disorders classification using artificial immune recognition system (AIRS) with performance evaluation by fuzzy resource allocation mechanism

机译:利用人工免疫识别系统(AIRS)对乳腺癌和肝病进行分类,并通过模糊资源分配机制评估绩效

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Artificial Immune Recognition System (AIRS) classification algorithm, which has an important place among classification algorithms in the field of Artificial Immune Systems, has showed an effective and intriguing performance on the problems it was applied. AIRS was previously applied to some medical classification problems including Breast Cancer, Cleveland Heart Disease, Diabetes and it obtained very satisfactory results. So, AIRS proved to be an efficient artificial intelligence technique in medical field. In this study, the resource allocation mechanism of AIRS was changed with a new one determined by Fuzzy-Logic. This system, named as Fuzzy- AIRS was used as a classifier in the diagnosis of Breast Cancer and Liver Disorders, which are of great importance in medicine. The classifications of Breast Cancer and BUPA Liver Disorders datasets taken from University of California at Irvine (UCI) Machine Learning Repository were done using 10-fold cross-validation method. Reached classification accuracies were evaluated by comparing them with reported classifiers in UCI web site in addition to other systems that are applied to the related problems. Also, the obtained classification performances were compared with AIRS with regard to the classification accuracy, number of resources and classifica-tion time. Fuzzy-AIRS, which reached to classification accuracy of 98.51% for breast cancer, classified the Liver Disorders dataset with 83.36% accuracy. For both datasets, Fuzzy-AIRS obtained the highest classification accuracy according to the UCI web site. Beside of this success, Fuzzy-AIRS gained an important advantage over the AIRS by means of classification time. In the experiments, it was seen that the classification time in Fuzzy-AIRS was reduced about 70% of AIRS for both datasets. By reducing classification time as well as obtaining high classification accuracies in the applied datasets, Fuzzy-AIRS classifier proved that it could be used as an effective classifier for medical problems.
机译:人工免疫识别系统(AIRS)分类算法在人工免疫系统领域的分类算法中占有重要地位,它在应用中所表现出的问题显示出有效而有趣的性能。 AIRS以前被应用于一些医学分类问题,包括乳腺癌,克利夫兰心脏病,糖尿病,并且获得了非常令人满意的结果。因此,AIRS被证明是医学领域中一种有效的人工智能技术。在这项研究中,通过模糊逻辑确定了一种新的AIRS资源分配机制。该系统被称为Fuzzy- AIRS,被用作诊断在医学上非常重要的乳腺癌和肝病的分类器。加州大学尔湾分校(UCI)机器学习存储库中的乳腺癌和BUPA肝脏疾病数据集的分类使用10倍交叉验证方法完成。除适用于相关问题的其他系统外,还通过将其与UCI网站中报告的分类器进行比较来评估达到的分类准确性。此外,在分类准确度,资源数量和分类时间方面,将获得的分类性能与AIRS进行了比较。 Fuzzy-AIRS对乳腺癌的分类精度达到98.51%,对肝病数据集进行了83.36%的精度分类。对于这两个数据集,Fuzzy-AIRS根据UCI网站获得了最高的分类精度。除此以外,Fuzzy-AIRS还通过分类时间获得了优于AIRS的重要优势。在实验中,可以看到对于两个数据集,Fuzzy-AIRS中的分类时间都减少了AIRS的70%。通过减少分类时间并在应用数据集中获得较高的分类精度,Fuzzy-AIRS分类器证明它可以用作医学问题的有效分类器。

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