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Protein subnuclear location based on KLDA with fused kernel and effective fusion representation

机译:基于具有融合核和有效融合表示的KLDA的蛋白质亚核定位

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Discriminated dimensionality reduction algorithm and informative feature representation are equal importance for improving prediction accuracy of protein subnuclear. Based on this thought, this paper simultaneously proposed an effective fused kernel function and an integrated feature expression for predicting protein subnuclear location. To obtain their optimal fusion parameter respectively, the particle swarm optimization (PSO) algorithm was employed to search them during the fusing processes. To verify the feasibility of our proposed approach, a standard public dataset was adopted to carry out the numerical experiment with k-nearest neighbors (KNN) as the classifier. The last results of Jackknife test method can be as high as 94.6779% with our fused kernel and representation, which undoubtedly reveals that our proposed integration method is of efficiency in protein subnuclear localization to a large extent.
机译:区分维数减少算法和信息特征表示对于提高蛋白质亚核的预测准确性具有同等重要性。基于此思想,本文同时提出了一种有效的融合核函数和一个集成的特征表达,用于预测蛋白质亚核位置。为了分别获得它们的最佳融合参数,在融合过程中采用了粒子群算法(PSO)对它们进行搜索。为了验证我们提出的方法的可行性,采用了一个标准的公共数据集,以k最近邻(KNN)作为分类器进行了数值实验。利用我们的融合核和表示法,Jackknife测试方法的最后结果可以高达94.6779%,这无疑表明我们提出的整合方法在很大程度上有效地实现了蛋白质亚核的定位。

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