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Combining Ensemble of Classifiers Using Voting-Based Rule to Predict Radiological Ratings for Lung Nodule Malignancy

机译:使用基于投票的规则结合分类器的集合预测肺结节恶性肿瘤的放射性评级

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In this paper, we are proposing new ensemble strategy for classification of lung nodules based on their malignancy ratings. The procedure we followed is simpler. In the first step, we construct different homogenous ensemble models such as bagged decision tree (BaDT), boosted decision tree (BoBT), and random sub-space-based decision tree (RSSDT). In the next step, we combine previously constructed models with voting scheme to yield ensemble of homogenous ensemble of classifiers. We also examine the behavior of our method for heterogeneity in the system. This is done by constructing ensemble of heterogeneous ensemble of classifiers. For this, we have also considered bagged KNN (BaKNN), boosted KNN (BoKNN), bagged PART (BaPART), and boosted PART classifier (BoPART). The results we are obtaining from our strategy are significant compared to homogenous ensemble model.
机译:在本文中,我们提出了基于恶性评级的肺结节分类的新集合策略。我们遵循的程序更简单。在第一步中,我们构建不同的同质集合模型,例如袋装决策树(BADT),提升决策树(BOBT)和随机的基于空间的决策树(RSSDT)。在下一步中,我们将先前构造的模型与投票方案结合起来,以产生分类器的均质集合的合奏。我们还研究了我们在系统中的异质性方法的行为。这是通过构建分类器的异构集合的集合来完成的。为此,我们还考虑了袋装KNN(BAKNN),提升KNN(BOKNN),袋装部分(BAPART)和提升部分分类器(BOPART)。与均质集合模型相比,我们从我们的策略中获得的结果是显着的。

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