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首页> 外文期刊>Talanta: The International Journal of Pure and Applied Analytical Chemistry >Prediction of surface tension for common compounds based on novel methods using heuristic method and support vector machine
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Prediction of surface tension for common compounds based on novel methods using heuristic method and support vector machine

机译:基于启发式方法和支持向量机的新方法对常见化合物的表面张力进行预测

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As a novel type of learning machine method a support vector machine(SVM)was first used to develop a quantitative structure-property relationship(QSPR)model for the latest surface tension data of common diversity liquid compounds.Each compound was represented by structural descriptors,which were calculated from the molecular structure by the CODESSA program.The heuristic method(HM)was used to search the descriptor space,select the descriptors responsible for surface tension,and give the best linear regression model using the selected descriptors.Using the same descriptors,the non-linear regression model was built based on the support vector machine.Comparing the results of the two methods,the non-linear regression model gave a better prediction result than the heuristic method.Some insights into the factors that were likely to govern the surface tension of the diversity compounds could be gained by interpreting the molecular descriptors,which were selected by the heuristic model.This paper proposes a new effective way of researching interface chemistry,and can be very helpful to industry.
机译:作为一种新型的学习机方法,首先使用支持向量机(SVM)为常见多样性液体化合物的最新表面张力数据建立定量结构-性质关系(QSPR)模型。每种化合物都用结构描述符表示,使用启发式方法(HM)搜索描述符空间,选择负责表面张力的描述符,并使用所选描述符提供最佳线性回归模型。然后,在支持向量机的基础上建立了非线性回归模型。将两种方法的结果进行比较,与启发式方法相比,非线性回归模型的预测结果更好。对可能控制因素的一些见解可以通过解释由启发式模型选择的分子描述符来获得多样性化合物的表面张力。 per提出了一种研究界面化学的新有效方法,对工业界将非常有帮助。

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