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Effective Monotone Knowledge Integration in Kernel Support Vector Machines

机译:内核支持向量机中的有效单调知识集成

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In many machine learning applications there exists prior knowledge that the response variable should be increasing (or decreasing) in one or more of the features. This is the knowledge of 'monotone' relationships. This paper presents two new techniques for incorporating monotone knowledge into non-linear kernel support vector machine classifiers. Incorporating monotone knowledge is useful because it can improve predictive performance, and satisfy user requirements. While this is relatively straight forward for linear margin classifiers, for kernel SVM it is more challenging to achieve efficiently. We apply the new techniques to real datasets and investigate the impact of monotonicity and sample size on predictive accuracy. The results show that the proposed techniques can significantly improve accuracy when the unconstrained model is not already fully monotone, which often occurs at smaller sample sizes. In contrast, existing techniques demonstrate a significantly lower capacity to increase monotonicity or achieve the resulting accuracy improvements.
机译:在许多机器学习应用中,存在先验知识的,即响应变量应该在一个或多个功能中增加(或减少)。这是“单调”关系的知识。本文提出了两种用于将单调知识掺入非线性内核支持向量机分类器中的两种新技术。包含单调知识很有用,因为它可以提高预测性能,并满足用户要求。虽然这对于线性保证金分类器相对直截了当,但对于内核SVM,它更具挑战性,实现有效地实现。我们将新技术应用于真实数据集,并调查单调性和样本大小对预测准确性的影响。结果表明,当不受约束的模型尚未完全单调时,所提出的技术可以显着提高精度,这通常发生在较小的样本尺寸。相比之下,现有技术表明了增加单调性或达到所得精度改善的能力显着降低。

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