Abstract Without non-linear basis functions many problems can not be solved by linear algorithms. This article proposes a method to automatically construct such basis functions with slow feature analysis (SFA). Non-linear optimization of this unsupervised learning method generates an orthogonal basis on the unknown latent space for a given time series. In contrast to methods like PCA, SFA is thus well suited for techniques that make direct use of the latent space. Real-world time series can be complex, and current SFA algorithms are either not powerful enough or tend to over-fit. We make use of the kernel trick in combination with sparsification to develop a kernelized SFA algorithm which provides a powerful function class for large data se...
In Slow Feature Analysis (SFA [1]), it has been demonstrated that high-order invariant properties c...
To accelerate the training of kernel machines, we propose to map the input data to a randomized low-...
Kernel Principal Component Analysis (KPCA) has proven to be a versatile tool for unsupervised learni...
Without non-linear basis functions many problems can not be solved by linear algorithms. This articl...
This paper develops a kernelized slow feature analysis (SFA) algorithm. SFA is an unsupervised learn...
A fast algorithm, Accelerated Kernel Feature Analysis (AKFA), that discovers salient features eviden...
Abstract. The success of many learning algorithms hinges on the re-liable selection or construction ...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
A recently introduced latent feature learning technique for time varying dynamic phenomena analysis ...
In kernel based methods such as Regularization Networks large datasets pose signi- cant problems s...
We propose a method for the approximation of high- or even infinite-dimensional feature vectors, whi...
We consider a learning algorithm generated by a regularization scheme with a concave regularizer for...
We show that the relevant information of a supervised learning problem is contained up to negligible...
Supervised learning from high-dimensional data, e.g., multimedia data, is a challenging task. We pro...
In Slow Feature Analysis (SFA [1]), it has been demonstrated that high-order invariant properties c...
To accelerate the training of kernel machines, we propose to map the input data to a randomized low-...
Kernel Principal Component Analysis (KPCA) has proven to be a versatile tool for unsupervised learni...
Without non-linear basis functions many problems can not be solved by linear algorithms. This articl...
This paper develops a kernelized slow feature analysis (SFA) algorithm. SFA is an unsupervised learn...
A fast algorithm, Accelerated Kernel Feature Analysis (AKFA), that discovers salient features eviden...
Abstract. The success of many learning algorithms hinges on the re-liable selection or construction ...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
A recently introduced latent feature learning technique for time varying dynamic phenomena analysis ...
In kernel based methods such as Regularization Networks large datasets pose signi- cant problems s...
We propose a method for the approximation of high- or even infinite-dimensional feature vectors, whi...
We consider a learning algorithm generated by a regularization scheme with a concave regularizer for...
We show that the relevant information of a supervised learning problem is contained up to negligible...
Supervised learning from high-dimensional data, e.g., multimedia data, is a challenging task. We pro...
In Slow Feature Analysis (SFA [1]), it has been demonstrated that high-order invariant properties c...
To accelerate the training of kernel machines, we propose to map the input data to a randomized low-...
Kernel Principal Component Analysis (KPCA) has proven to be a versatile tool for unsupervised learni...