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Locality Kernels for Protein Classification

机译:蛋白质分类的局部核

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We propose kernels that take advantage of local correlations in sequential data and present their application to the protein classification problem. Our locality kernels measure protein sequence similarities within a small window constructed around matching amino acids. The kernels incorporate positional information of the amino acids inside the window and allow a range of position dependent similarity evaluations. We use these kernels with regularized least-squares algorithm (RLS) for protein classification on the SCOP database. Our experiments demonstrate that the locality kernels perform significantly better than the spectrum and the mismatch kernels. When used together with RLS, performance of the locality kernels is comparable with some state-of-the-art methods of protein classification and remote homology detection.
机译:我们提出了利用顺序数据中的局部相关性的核,并将其应用于蛋白质分类问题。我们的本地性内核在围绕匹配氨基酸构建的一个小窗口内测量蛋白质序列的相似性。谷粒结合了窗口内氨基酸的位置信息,并允许进行一系列位置相关的相似性评估。我们将这些内核与正则化最小二乘算法(RLS)一起用于SCOP数据库上的蛋白质分类。我们的实验表明,局域性内核的性能明显优于频谱和不匹配内核。当与RLS一起使用时,局部核的性能可与某些最新的蛋白质分类和远程同源性检测方法相媲美。

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