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Replacement method and enhanced replacement method versus the genetic algorithm approach for the selection of molecular descriptors in QSPR/QSAR theories

机译:QSPR / QSAR理论中分子描述子的替换方法和增强替换方法与遗传算法的比较

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摘要

We compare three methods for the selection of optimal subsets of molecular descriptors from a much greater pool of such regression variables. On the one hand is our enhanced replacement method (ERM) and on the other is the simpler replacement method (RM) and the genetic algorithm (GA). These methods avoid the impracticable full search for optimal variables in large sets of molecular descriptors. Present results for 10 different experimental databases suggest that the ERM is clearly preferable to the GA that is slightly better than the RM. However, the latter approach requires the smallest amount of linear regressions and, consequently, the lowest computation time.
机译:我们比较了从大量此类回归变量中选择分子描述符的最佳子集的三种方法。一方面是我们的增强替换方法(ERM),另一方面是更简单的替换方法(RM)和遗传算法(GA)。这些方法避免了在大量分子描述符中对最优变量进行不切实际的全面搜索。现有的10个不同实验数据库的结果表明,ERM明显优于GA,后者略好于RM。但是,后一种方法需要最少的线性回归,因此需要最少的计算时间。

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