3 research outputs found

    Dual-random ensemble method for multi-label classification of biological data

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    This paper presents a dual-random ensemble multi-label classification method for classification of multi-label data. The method is formed by integrating and extending the concepts of feature subspace method and random k-label set ensemble multi-label classification method. Experiemental results show that the developed method outperforms the exisiting multi-lable classification methods on three different multi-lable datasets including the biological yeast and genbase datasets.<br /

    Pulmonary nodule classification aided by clustering

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    Lung nodules can be detected through examining CT scans. An automated lung nodule classification system is presented in this paper. The system employs random forests as its base classifier. A unique architecture for classification-aided-by-clustering is presented. Four experiments are conducted to study the performance of the developed system. 5721 CT lung image slices from the LIDC database are employed in the experiments. According to the experimental results, the highest sensitivity of 97.92%, and specificity of 96.28% are achieved by the system. The results demonstrate that the system has improved the performances of its tested counterparts.S.L.A. Lee, A.Z. Kouzani, and G. Nasierding, E.J. H

    Software warehouse and software mining : towards the next generation software engineering

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    Department of ComputingRefereed conference pape
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