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Oscillation heuristics for the two-group classification problem

机译:两组分类问题的振荡启发法

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We propose a new nonparametric family of oscillation heuristics for improving linear classifiers in the two-group discriminant problem. The heuristics are motivated by the intuition that the classification accuracy of a separating hyperplane can be improved through small perturbations to its slope and position, accomplished by substituting training observations near the hyperplane for those used to generate it. In an extensive simulation study, using data generated from multivariate normal distributions under a variety of conditions, the oscillation heuristics consistently improve upon the classical linear and logistic discriminant functions, as well as two published linear programming-based heuristics and a linear Support Vector Machine. Added to any of the methods above, they approach, and frequently attain, the best possible accuracy on the training samples, as determined by a mixed-integer programming (MIP) model, at a much smaller computational cost. They also improve expected accuracy on the overall populations when the populations overlap significantly and the heuristics are trained with large samples, at least in situations where the data conditions do not explicitly favor a particular classifier.
机译:我们提出了一种新的振荡启发式非参数族,以改进两组判别问题中的线性分类器。启发式启发是基于这样的直觉,即可以通过对超平面附近的训练观测值替换生成超平面的训练观测值来实现,通过对其斜率和位置进行较小的扰动来提高分离超平面的分类精度。在广泛的仿真研究中,使用在各种条件下从多元正态分布生成的数据,振荡启发式方法在经典的线性和逻辑判别函数以及两个基于线性编程的启发式方法和线性支持向量机的基础上不断改进。通过将上述方法添加到上述任何一种方法中,它们可以以较小的计算成本逼近并经常获得由混合整数编程(MIP)模型确定的训练样本的最佳精度。当总体明显重叠且启发式算法使用大样本进行训练时,至少在数据条件未明确支持特定分类器的情况下,它们还提高了总体总体的预期准确性。

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