基于多agent的乳腺肿瘤分类器性能分析

Malgwi Ym, Wajiga Gm, Garba Ej
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摘要

在众多分类器算法中选择最佳分类器的难题一直是数据挖掘中的一大难题。机器学习广泛应用于生物信息学,尤其是乳腺癌诊断。本研究基于对不同分类器算法(k-NN、J48、Decision table、Decision stump、NaA¯ve Bayes)的开发和评价,利用多智能体平台和MYSQL,根据肿瘤疾病的相关症状和危险因素对乳腺肿瘤进行诊断,从中寻找最佳算法。采用Java Agent Development Environment (JADE)进行建模和仿真。采用10倍交叉验证法,对从尼日利亚约拉FMC和贡贝FMC获得的乳腺肿瘤临床数据集进行检测。分析结果表明,k-NN分类器比其他分类算法具有更高的性能;因此,在被测试的分类器中,它被选为准确率得分较高、假阳性率值较低的最佳分类器。
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Multi-Agent-Based Performance Analysis of Classifiers for Breast Tumours
The challenging effect of selecting the best classifier among many classifier algorithms has been a big problem in data mining. Machine learning is widely used in bioinformatics and particularly in breast cancer diagnosis. This study is based on developing and evaluating different classifier algorithm (k-NN, J48, Decision table, Decision stump, and NaA¯ve Bayes) in order to find the best among them using multi-agent platform and MYSQL for the diagnosis of breast tumors based on associated symptoms and risk factors of cancer diseases. Java Agent Development Environment (JADE) was used for the modeling and simulation. The results and the accuracy score were tested with a breast tumor clinical datasets which were gotten and formed from FMC Yola and FMC Gombe in Nigeria using 10- fold Cross-validation method. The results of the analysis reveal that k-NN classifier has a greater performance capability over other classification algorithms; hence, it is selected to be the best among the tested classifiers with higher accuracy score and lower false positive rate value.
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