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Model averaging for support vector classifier by cross-validation

机译:通过交叉验证对支持向量分类器进行模型平均

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摘要

Abstract Support vector classification (SVC) is a well-known statistical technique for classification problems in machine learning and other fields. An important question for SVC is the selection of covariates (or features) for the model. Many studies have considered model selection methods. As is well-known, selecting one winning model over others can entail considerable instability in predictive performance due to model selection uncertainties. This paper advocates model averaging as an alternative approach, where estimates obtained from different models are combined in a weighted average. We propose a model weighting scheme and provide the theoretical underpinning for the proposed method. In particular, we prove that our proposed method yields a model average estimator that achieves the smallest hinge risk among all feasible combinations asymptotically. To remedy the computational burden due to a large number of feasible models, we propose a screening step to eliminate the uninformative features before combining the models. Results from real data applications and a simulation study show that the proposed method generally yields more accurate estimates than existing methods.
机译:摘要 支持向量分类(SVC)是机器学习等领域中一种著名的分类问题统计技术。SVC 的一个重要问题是模型的协变量(或特征)的选择。许多研究都考虑了模型选择方法。众所周知,由于模型选择的不确定性,选择一个获胜模型而不是其他模型可能会导致预测性能的相当大的不稳定性。本文提倡将模型平均作为一种替代方法,即从不同模型获得的估计值组合在加权平均值中。提出了一种模型加权方案,并为所提方法提供了理论依据。特别是,我们证明了我们提出的方法产生了一个模型平均估计器,该估计器在所有可行组合中渐近地实现了最小的铰链风险。为了弥补由于大量可行模型造成的计算负担,我们提出了一个筛选步骤,以在组合模型之前消除无信息特征。真实数据应用和仿真研究的结果表明,所提出的方法通常比现有方法产生更准确的估计。

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