Polynomial kernels are among the most popular kernels in machine learning, since their feature maps model the interactions between the dimensions of the input data. However, these features correspond to tensor products of the input with itself, which makes their dimension grow exponentially with the polynomial degree. We address this issue by proposing Complexto-Real (CtR) sketches for tensor products that can be used as random feature approximations of polynomial kernels. These sketches leverage intermediate complex random projections, leading to better theoretical guarantees and potentially much lower variances than analogs using real projections. Our sketches are simple to construct and their final output is real-valued, which makes th...
We study the generalization properties of ridge regression with random features in the statistical l...
Motivated by a problem in computational complexity, we consider the behavior of rank functions for t...
The random Fourier features (RFFs) method is a powerful and popular technique in kernel approximatio...
[EN] According to recent reports, over the course of 2018, the volume of data generated, captured an...
Kernel approximation using randomized fea-ture maps has recently gained a lot of in-terest. In this ...
Kernel approximation using random feature maps has recently gained a lot of interest. This is mainly...
[EN] This paper presents a novel non-linear extension of the Random Projection method based on the d...
Dot product kernels, such as polynomial and exponential (softmax) kernels, are among the most widely...
Dot product kernels, such as polynomial and exponential (softmax) kernels, are among the most widely...
Kernel methods and neural networks are two important schemes in the supervised learning field. The t...
In the context of kernel machines, polynomial and Fourier features are commonly used to provide a no...
Kernel methods are fundamental tools in machine learning that allow detection of non-linear dependen...
To accelerate the training of kernel machines, we propose to map the input data to a randomized low-...
The Tanimoto coefficient is commonly used to measure the similarity between molecules represented as...
To accelerate the training of kernel machines, we propose to map the input data to a randomized low-...
We study the generalization properties of ridge regression with random features in the statistical l...
Motivated by a problem in computational complexity, we consider the behavior of rank functions for t...
The random Fourier features (RFFs) method is a powerful and popular technique in kernel approximatio...
[EN] According to recent reports, over the course of 2018, the volume of data generated, captured an...
Kernel approximation using randomized fea-ture maps has recently gained a lot of in-terest. In this ...
Kernel approximation using random feature maps has recently gained a lot of interest. This is mainly...
[EN] This paper presents a novel non-linear extension of the Random Projection method based on the d...
Dot product kernels, such as polynomial and exponential (softmax) kernels, are among the most widely...
Dot product kernels, such as polynomial and exponential (softmax) kernels, are among the most widely...
Kernel methods and neural networks are two important schemes in the supervised learning field. The t...
In the context of kernel machines, polynomial and Fourier features are commonly used to provide a no...
Kernel methods are fundamental tools in machine learning that allow detection of non-linear dependen...
To accelerate the training of kernel machines, we propose to map the input data to a randomized low-...
The Tanimoto coefficient is commonly used to measure the similarity between molecules represented as...
To accelerate the training of kernel machines, we propose to map the input data to a randomized low-...
We study the generalization properties of ridge regression with random features in the statistical l...
Motivated by a problem in computational complexity, we consider the behavior of rank functions for t...
The random Fourier features (RFFs) method is a powerful and popular technique in kernel approximatio...