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Multi-level clustering support vector machine trees for improved protein local structure prediction

机译:多级聚类支持向量机树,用于改进蛋白质局部结构预测

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摘要

Local protein structure prediction is one of important tasks for bioinformatics research. In order to further enhance the performance of local protein structure prediction, we propose the Multi-level Clustering Support Vector Machine Trees (MLSVMTs). Building on the multi-cluster tree structure, the MLSVMTs model uses multiple SVMs,each of which is customized to learn the unique sequence-to-structure relationship for one cluster. Both the combined 5×2 CV F test and the independent test show that the local structure prediction accuracy of MLSVMTs is significantly better than that of one-level K-means clustering, Multi-level clustering and Clustering Support Vector Machines.
机译:局部蛋白质结构预测是生物信息学研究的重要任务之一。为了进一步提高局部蛋白质结构预测的性能,我们提出了多级聚类支持向量机树(MLSVMT)。 MLSVMTs模型建立在多集群树结构的基础上,使用多个SVM,对每个SVM进行定制以了解一个集群的独特序列与结构关系。结合5×2 CV F检验和独立检验均表明,MLSVMTs的局部结构预测精度明显优于一级K-means聚类,多层聚类和聚类支持向量机。

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