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Combining Dissimilarities in a Hyper Reproducing Kernel Hilbert Space for Complex Human Cancer Prediction

机译:结合超相似的人类生殖器超预测内核希尔伯特空间中的差异。

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摘要

DNA microarrays provide rich profiles that are used in cancer prediction considering the gene expression levels across a collection of related samples. Support Vector Machines (SVM) have been applied to the classification of cancer samples with encouraging results. However, they rely on Euclidean distances that fail to reflect accurately the proximities among sample profiles. Then, non-Euclidean dissimilarities provide additional information that should be considered to reduce the misclassification errors. In this paper, we incorporate in the ν-SVM algorithm a linear combination of non-Euclidean dissimilarities. The weights of the combination are learnt in a (Hyper Reproducing Kernel Hilbert Space) HRKHS using a Semidefinite Programming algorithm. This approach allows us to incorporate a smoothing term that penalizes the complexity of the family of distances and avoids overfitting. The experimental results suggest that the method proposed helps to reduce the misclassification errors in severalhuman cancer problems.
机译:考虑到一系列相关样本中的基因表达水平,DNA微阵列提供了丰富的谱图,可用于癌症预测。支持向量机(SVM)已应用于癌症样本的分类,并获得了令人鼓舞的结果。但是,它们依赖于欧几里得距离,而欧几里得距离无法准确反映出样本轮廓之间的接近度。然后,非欧几里得的差异提供了应考虑的其他信息,以减少错误分类错误。在本文中,我们将非欧几里得差异的线性组合纳入ν-SVM算法。组合的权重是使用半定规划算法在(超再现内核希尔伯特空间)HRKHS中学习的。这种方法使我们可以合并一个平滑术语,该术语会惩罚距离系列的复杂性并避免过度拟合。实验结果表明,所提出的方法有助于减少几种类型的错误分类错误。人类癌症问题。

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