KELL: A Kernel-Embedded Local Learning for Data-Intensive Modeling

Changtong Luo
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Abstract

Kernel methods are widely used in machine learning. They introduce a nonlinear transformation to achieve a linearization effect: using linear methods to solve nonlinear problems. However, typical kernel methods like Gaussian process regression suffer from a memory consumption issue for data-intensive modeling: the memory required by the algorithms increases rapidly with the growth of data, limiting their applicability. Localized methods can split the training data into batches and largely reduce the amount of data used each time, thus effectively alleviating the memory pressure. This paper combines the two approaches by embedding kernel functions into local learning methods and optimizing algorithm parameters including the local factors, model orders. This results in the kernel-embedded local learning (KELL) method. Numerical studies show that compared with kernel methods like Gaussian process regression, KELL can significantly reduce memory requirements for complex nonlinear models. And compared with other non-kernel methods, KELL demonstrates higher prediction accuracy.
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KELL:用于数据密集型建模的核嵌入局部学习
核方法在机器学习中有着广泛的应用。他们引入一种非线性变换来达到线性化的效果:用线性方法来解决非线性问题。然而,典型的核方法,如高斯过程回归,在数据密集型建模中存在内存消耗问题:算法所需的内存随着数据的增长而迅速增加,限制了它们的适用性。局部化方法可以将训练数据分割成批,大大减少了每次使用的数据量,从而有效缓解了内存压力。本文通过将核函数嵌入到局部学习方法中,优化局部因子、模型阶数等算法参数,将两种方法相结合。这就产生了嵌入核的局部学习(KELL)方法。数值研究表明,与高斯过程回归等核方法相比,KELL可以显著降低复杂非线性模型的内存需求。与其他非核方法相比,KELL具有更高的预测精度。
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