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Basis vector orthogonalization for an improved kernel gradient matching pursuit method

机译:基向量正交化改进的核梯度匹配追踪方法

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With the aim of achieving a computationally efficient optimization of kernel-based probabilistic models for various problems, such as sequential pattern recognition, we have already developed the kernel gradient matching pursuit method as an approximation technique for kernel-based classification. The conventional kernel gradient matching pursuit method approximates the optimal parameter vector by using a linear combination of a small number of basis vectors. In this paper, we propose an improved kernel gradient matching pursuit method that introduces orthogonality constraints to the obtained basis vector set. We verified the efficiency of the proposed method by conducting recognition experiments based on handwritten image datasets and speech datasets. We realized a scalable kernel optimization that incorporated various models, handled very high-dimensional features (>100 K features), and enabled the use of large scale datasets (> 10 M samples).
机译:为了实现针对各种问题(例如顺序模式识别)的基于核的概率模型的高效计算优化,我们已经开发了核梯度匹配追踪方法作为基于核的分类的一种近似技术。传统的核梯度匹配追踪方法通过使用少量基矢量的线性组合来逼近最佳参数矢量。在本文中,我们提出了一种改进的核梯度匹配追踪方法,该方法将正交性约束引入所获得的基向量集。我们通过对手写图像数据集和语音数据集进行识别实验,验证了该方法的有效性。我们实现了可扩展的内核优化,该优化合并了各种模型,处理了非常高维的特征(> 100 K个特征),并启用了大规模数据集(> 10 M个样本)的使用。

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