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Controlling the outcome of S(N)2 reactions in ionic liquids: from rational data set design to predictive linear regression models

机译:控制离子液体中的S(n)2反应的结果:从合理数据集设计到预测线性回归模型

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Rate constants for a bimolecular nucleophilic substitution (S(N)2) process in a range of ionic liquids are correlated with calculated parameters associated with the charge localisation on the cation of the ionic liquid (including the molecular electrostatic potential). Simple linear regression models proved effective, though the interdependency of the descriptors needs to be taken into account when considering generality. A series of ionic liquids were then prepared and evaluated as solvents for the same process; this data set was rationally chosen to incorporate homologous series (to evaluate systematic variation) and functionalities not available in the original data set. These new data were used to evaluate and refine the original models, which were expanded to include simple artificial neural networks. Along with showing the importance of an appropriate data set and the perils of overfitting, the work demonstrates that such models can be used to reliably predict ionic liquid solvent effects on an organic process, within the limits of the data set.
机译:用于双分子亲核取代的速率常数(S(n)2)在一系列离子液体中的方法与与离子液体阳离子的电荷定位相关的计算参数相关(包括分子静电势)。简单的线性回归模型证明有效,但在考虑一般性时需要考虑描述符的相互依赖性。然后制备一系列离子液体并评价为相同的溶剂。该数据集是合理选择的,以结合同源系列(评估系统变化)和原始数据集中不可用的功能。这些新数据用于评估和改进原始模型,这些模型被扩展为包括简单的人工神经网络。随着显示适当数据集的重要性和过度装备的危险,工作表明,这种模型可用于在数据集的限制内可靠地预测对有机过程的离子液体溶剂效应。

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