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首页> 外文期刊>International Journal of Neural Systems >RANKING-BASED KERNELS IN APPLIED BIOMEDICAL DIAGNOSTICS USING A SUPPORT VECTOR MACHINE
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RANKING-BASED KERNELS IN APPLIED BIOMEDICAL DIAGNOSTICS USING A SUPPORT VECTOR MACHINE

机译:使用支持向量机的生物医学诊断中基于排名的内核

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This paper presents some essential findings and results on using ranking-based kernels for the analysis and utilization of high dimensional and noisy biomedical data in applied clinical diagnostics. We claim that presented kernels combined with a state-of-the-art classification technique — a Support Vector Machine (SVM) — could significantly improve the classification rate and predictive power of the wrapper method, e.g. SVM. Moreover, the advantage of such kernels could be potentially exploited for other kernel methods and essential computer-aided tasks such as novelty detection and clustering. Our experimental results and theoretical generalization bounds imply that ranking-based kernels outperform other traditionally employed SVM kernels on high dimensional biomedical and microarray data.
机译:本文提出了一些基本的发现和结果,这些发现和结果表明了使用基于排名的内核来分析和利用高维和嘈杂的生物医学数据进行临床诊断。我们声称,提出的内核与最新的分类技术-支持向量机(SVM)相结合,可以显着提高包装方法的分类率和预测能力,例如支持向量机此外,此类内核的优势可能会被其他内核方法和必要的计算机辅助任务(如新颖性检测和聚类)所利用。我们的实验结果和理论上的概括界限表明,在高维生物医学和微阵列数据上,基于排名的内核优于其他传统采用的SVM内核。

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