Random Fourier features are a powerful framework to approximate shift invariant kernels with Monte Carlo integration, which has drawn considerable interest in scaling up kernel-based learning, dimensionality reduction, and information retrieval. In the literature, many sampling schemes have been proposed to improve the approximation performance. However, an interesting theoretic and algorithmic challenge still remains, i.e., how to optimize the design of random Fourier features to achieve good kernel approximation on any input data using a low spectral sampling rate? In this paper, we propose to compute more adaptive random Fourier features with optimized spectral samples (wj’s) and feature weights (pj’s). The learning scheme not only signi...
We propose a Gradient Boosting algorithm for learning an ensemble of kernel functions adapted to the...
We propose a Gradient Boosting algorithm for learning an ensemble of kernel functions adapted to the...
We propose a Gradient Boosting algorithm for learning an ensemble of kernel functions adapted to the...
Random Fourier features (RFF) are a popular set of tools for constructing low-dimensional approximat...
Kernel methods represent one of the most powerful tools in machine learning to tackle problems expre...
Abstract Kernel methods represent one of the most powerful tools in machine learning to tackle probl...
Approximations based on random Fourier features have recently emerged as an efficient and formally c...
Kernel methods are powerful and flexible approach to solve many problems in machine learning. Due to...
Kernel methods are powerful and flexible approach to solve many problems in machine learning. Due to...
Kernel methods are powerful and flexible approach to solve many problems in machine learning. Due to...
Random Fourier features is a widely used, simple, and effective technique for scaling up kernel meth...
Random Fourier features is a widely used, simple, and effective technique for scaling up kernel meth...
Random Fourier features is a widely used, simple, and effective technique for scaling up kernel meth...
Kernel methods and neural networks are two important schemes in the supervised learning field. The t...
We introduce kernels with random Fourier features in the meta-learning framework for few-shot learni...
We propose a Gradient Boosting algorithm for learning an ensemble of kernel functions adapted to the...
We propose a Gradient Boosting algorithm for learning an ensemble of kernel functions adapted to the...
We propose a Gradient Boosting algorithm for learning an ensemble of kernel functions adapted to the...
Random Fourier features (RFF) are a popular set of tools for constructing low-dimensional approximat...
Kernel methods represent one of the most powerful tools in machine learning to tackle problems expre...
Abstract Kernel methods represent one of the most powerful tools in machine learning to tackle probl...
Approximations based on random Fourier features have recently emerged as an efficient and formally c...
Kernel methods are powerful and flexible approach to solve many problems in machine learning. Due to...
Kernel methods are powerful and flexible approach to solve many problems in machine learning. Due to...
Kernel methods are powerful and flexible approach to solve many problems in machine learning. Due to...
Random Fourier features is a widely used, simple, and effective technique for scaling up kernel meth...
Random Fourier features is a widely used, simple, and effective technique for scaling up kernel meth...
Random Fourier features is a widely used, simple, and effective technique for scaling up kernel meth...
Kernel methods and neural networks are two important schemes in the supervised learning field. The t...
We introduce kernels with random Fourier features in the meta-learning framework for few-shot learni...
We propose a Gradient Boosting algorithm for learning an ensemble of kernel functions adapted to the...
We propose a Gradient Boosting algorithm for learning an ensemble of kernel functions adapted to the...
We propose a Gradient Boosting algorithm for learning an ensemble of kernel functions adapted to the...