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Solving large protein secondary structure classification problems by a nonlinear complementarity algorithm with {0, 1} variables

机译:用变量{0,1}的非线性互补算法求解大蛋白二级结构分类问题

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摘要

The aim of this paper is to present a nonlinear complementarity algorithm, limited to binary variables, to implement a classification algorithm, which will be applied to the determination of the secondary structure of proteins, and to present its statistical and mathematical convergence properties. Extensive application results will be given on the available test data sets of proteins and the results will be compared with those of other implementations. The increase in the recognition accuracy, which will be in evidence, will be shown to be attributable to the adoption of a strict statistical methodology, which will permit to obtain unbiased results, without requiring extraneous assumptions.
机译:本文的目的是提出一种限于二进制变量的非线性互补算法,以实现一种分类算法,该算法将用于确定蛋白质的二级结构,并展示其统计和数学收敛性质。将在可用的蛋白质测试数据集上给出广泛的应用结果,并将结果与​​其他实现方案进行比较。显而易见,识别准确性的提高归因于采用严格的统计方法,这将允许获得无偏见的结果,而无需其他假设。

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