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HIPAD - A Hybrid Interior-Point Alternating Direction Algorithm for Knowledge-Based SVM and Feature Selection

机译:HIPAD-基于知识的SVM和特征选择的混合内点交替方向算法

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We consider classification tasks in the regime of scarce labeled training data in high dimensional feature space, where specific expert knowledge is also available. We propose a new hybrid optimization algorithm that solves the elastic-net support vector machine (SVM) through an alternating direction method of multipliers in the first phase, followed by an interior-point method for the classical SVM in the second phase. Both SVM formulations are adapted to knowledge incorporation. Our proposed algorithm addresses the challenges of automatic feature selection, high optimization accuracy, and algorithmic flexibility for taking advantage of prior knowledge. We demonstrate the effectiveness and efficiency of our algorithm and compare it with existing methods on a collection of synthetic and real-world data.
机译:我们考虑在高维特征空间中稀有标签的训练数据中的分类任务,在该数据中还可以使用特定的专家知识。我们提出了一种新的混合优化算法,该算法在第一阶段通过乘数的交替方向方法求解弹性网支持向量机(SVM),然后在第二阶段通过经典SVM的内点方法求解。两种SVM公式都适用于知识整合。我们提出的算法解决了自动特征选择,高优化精度和利用先验知识的算法灵活性带来的挑战。我们展示了我们算法的有效性和效率,并将其与现有方法进行了比较,并收集了合成和现实世界的数据。

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