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A mixed integer linear programming support vector machine for cost-effective feature selection

机译:混合整数线性编程支持向量机,用于经济高效的功能选择

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摘要

In the era of big data, feature selection is indispensable as a dimensional reduction technique to lower data complexity and enhance machine learning performances. However, traditional feature selection methods mainly focus on classification performances, while they exclude the impact of associated feature costs; e.g., price, risk, and computational complexity for feature acquisition. In this research, we extend the l(1) norm support vector machine (l(1)-SVM) to address the feature costs, by incorporating a budget constraint to preserve classification accuracy with the least expensive features. Furthermore, we formulate its robust counterpart to address the uncertainty of the feature costs. To enhance computational efficiency, we also develop an algorithm to tighten the bound of the weight vector in the budget constraint. Through the experimental study on a variety of benchmark and synthetic datasets, our proposed mixed integer linear programming (MILP) models show that they can achieve competitive outcomes in terms of predictive and economic performances. Also, the algorithm that tightens the budget constraint helps to curtail computational complexity. (C) 2020 Elsevier B.V. All rights reserved.
机译:在大数据的时代,特征选择是一种尺寸减少技术,以降低数据复杂性和增强机器学习性能。然而,传统的特征选择方法主要关注分类性能,而它们排除了相关特征成本的影响;例如,价格习得的价格,风险和计算复杂性。在本研究中,我们通过结合预算约束来延长L(1)规范支持向量机(L(1)-SVM)来解决特征成本,以便以最便宜的特征保持分类精度。此外,我们制定其强大的对应物,以解决特征成本的不确定性。为了提高计算效率,我们还开发了一种算法来缩回预算约束中的重量向量的界限。通过对各种基准和合成数据集的实验研究,我们提出的混合整数线性规划(MILP)模型表明,他们可以在预测和经济表演方面实现竞争结果。此外,收紧预算约束的算法有助于缩减计算复杂性。 (c)2020 Elsevier B.v.保留所有权利。

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