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Force Field Parametrization of Metal Ions from Statistical Learning Techniques

机译:从统计学习技术中强制金属离子的探测参数化

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A novel statistical procedure has been developed to optimize the parameters of nonbonded force fields of metal ions in soft matter. The criterion for the optimization is the minimization of the deviations from ab initio forces and energies calculated for model systems. The method exploits the combination of the linear ridge regression and the cross validation techniques with the differential evolution algorithm. Wide freedom in the choice of the functional form of the force fields is allowed since both linear and nonlinear parameters can be optimized. In order to maximize the information content of the data employed in the fitting procedure, the composition of the training set is entrusted to a combinatorial optimization algorithm which maximizes the dissimilarity of the included instances. The methodology has been validated using the force field parametrization of five metal ions (Zn2+, Ni2+, Mg2+, Ca2+, and Na+) in water as test cases.
机译:已经开发了一种新颖的统计程序,以优化软物中金属离子的非粘合力领域的参数。 优化的标准是最小化与模型系统计算的AB初始力和能量的偏差。 该方法利用线性脊回归和跨验证技术与差分演进算法的组合。 允许在选择功能形式的选择中自由,因为可以优化线性和非线性参数。 为了使拟合过程中采用的数据的信息内容最大化,培训集的组成被委托到组合优化算法,其最大化包括的实例的不相似性。 用水中使用五个金属离子(Zn2 +,Ni2 +,Mg2 +,Ca 2+和Na +)的力现场参数化验证了该方法作为测试用例。

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