fast gauss transform
Fast Krylov Methods for N-Body Learning
Freitas, Nando D., Wang, Yang, Mahdaviani, Maryam, Lang, Dustin
This paper addresses the issue of numerical computation in machine learning domains based on similarity metrics, such as kernel methods, spectral techniques and Gaussian processes. It presents a general solution strategy based on Krylov subspace iteration and fast N-body learning methods. The experiments show significant gains in computation and storage on datasets arising in image segmentation, object detection and dimensionality reduction. The paper also presents theoretical bounds on the stability of these methods.
Fast Krylov Methods for N-Body Learning
Freitas, Nando D., Wang, Yang, Mahdaviani, Maryam, Lang, Dustin
This paper addresses the issue of numerical computation in machine learning domains based on similarity metrics, such as kernel methods, spectral techniques and Gaussian processes. It presents a general solution strategy based on Krylov subspace iteration and fast N-body learning methods. The experiments show significant gains in computation and storage on datasets arising in image segmentation, object detection and dimensionality reduction. The paper also presents theoretical bounds on the stability of these methods.
Fast Krylov Methods for N-Body Learning
Freitas, Nando D., Wang, Yang, Mahdaviani, Maryam, Lang, Dustin
This paper addresses the issue of numerical computation in machine learning domains based on similarity metrics, such as kernel methods, spectral techniques and Gaussian processes. It presents a general solution strategybased on Krylov subspace iteration and fast N-body learning methods. The experiments show significant gains in computation and storage on datasets arising in image segmentation, object detection and dimensionality reduction. The paper also presents theoretical bounds on the stability of these methods.
Efficient Kernel Machines Using the Improved Fast Gauss Transform
Yang, Changjiang, Duraiswami, Ramani, Davis, Larry S.
Such a complexity is significant even for moderate size problems and is prohibitive for large datasets. We present an approximation technique based on the improved fast Gauss transform to reduce the computation to O(N). We also give an error bound for the approximation, and provide experimental results on the UCI datasets.
Efficient Kernel Machines Using the Improved Fast Gauss Transform
Yang, Changjiang, Duraiswami, Ramani, Davis, Larry S.
Such a complexity is significant even for moderate size problems and is prohibitive for large datasets. We present an approximation technique based on the improved fast Gauss transform to reduce the computation to O(N). We also give an error bound for the approximation, and provide experimental results on the UCI datasets.
Efficient Kernel Machines Using the Improved Fast Gauss Transform
Yang, Changjiang, Duraiswami, Ramani, Davis, Larry S.
Such a complexity is significant even for moderate size problems and is prohibitive for large datasets. We present an approximation technique based on the improved fast Gauss transform to reduce the computation to O(N). We also give an error bound for the approximation, and provide experimental results on the UCI datasets.