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A Pattern Search Method for Model Selection of Support Vector Regression

机译:一种模式搜索方法,用于模型选择支持向量回归

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We develop a fully-automated pattern search methodology for model selection of support vector machines (SVMs) for regression and classification. Pattern search (PS) is a derivative-free optimization method suitable for low-dimensional optimization problems for which it is difficult or impossible to calculate derivatives. This methodology was motivated by an application in drug design in which regression models are constructed based on a few high-dimensional exemplars. Automatic model selection in such underdetermined problems is essential to avoid overfitting and overestimates of generalization capability caused by selecting parameters based on testing results. We focus on SVM model selection for regression based on leave-one-out (LOO) and cross-validated estimates of mean squared error, but the search strategy is applicable to any model criterion. Because the resulting error surface produces an extremely noisy map of the model quality with many local minima, the resulting generalization capacity of any single local optimal model illustrates high variance. Thus several locally optimal SVM models are generated and then bagged or averaged to produce the final SVM. This strategy of pattern search combined with model averaging has proven to be very effective on benchmark tests and in high-variance drug design domains with high potential of overfitting.
机译:我们开发了一种全自动模式搜索方法,用于模型选择支持向量机(SVM),用于回归和分类。模式搜索(PS)是一种可用于低维优化问题的无衍生优化方法,用于计算衍生物难以或不可能。该方法是由药物设计中的应用程序的激励,其中基于少量高维样式构建回归模型。在这种未确定的问题中的自动模型选择对于避免通过基于测试结果选择参数而导致的泛化能力的过度舒适和高估。我们基于休假(LOO)和均方方误差的交叉验证估计,专注于回归的SVM模型选择,但搜索策略适用于任何模型标准。因为所产生的错误表面产生具有许多局部最小值的模型质量的极其嘈杂的图,所得到的任何单个局部最佳模型的泛化容量都表示高方差。因此,产生几种局部最佳的SVM模型,然后袋装或平均以产生最终的SVM。这种模式搜索策略与模型平均相结合,已被证明在基准测试和高方差药物设计域中非常有效,具有高潜力的过度装备。

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