We introduce a new family of positive-definite kernels that mimic the computation in large neural networks. We derive the different members of this family by considering neural networks with different activation functions. Using these kernels as building blocks, we also show how to construct other positive-definite kernels by operations such as composition, multiplication, and averaging. We explore the use of these kernels in standard models of supervised learning, such as support vector machines for large margin classification, as well as in new models of unsupervised learning based on deep architectures. On several problems, we obtain better results than previous, leading benchmarks from both support vector machines with Gaussian kernels ...
Kernel methods enable the direct usage of structured representations of textual data during language...
Kernel methods enable the direct usage of structured representations of textual data during language...
This thesis aims to study recent theoretical work in machine learning research that seeks to better ...
We review machine learning methods employing positive definite kernels. These methods formulate lear...
We review machine learning methods employing positive definite kernels. These methods formulate lear...
We review machine learning methods employing positive definite kernels. These methods formulate lear...
Kernel-based and Deep Learning methods are two of the most popular approaches in Computational Natur...
Kernel-based and Deep Learning methods are two of the most popular approaches in Computational Natur...
Abstract We introduce scalable deep kernels, which combine the structural properties of deep learnin...
Kernel-based and Deep Learning methods are two of the most popular approaches in Computational Natur...
Kernel-based and Deep Learning methods are two of the most popular approaches in Computational Natur...
Kernel methods enable the direct usage of structured representations of textual data during language...
Kernel methods enable the direct usage of structured representations of textual data during language...
Kernel methods enable the direct usage of structured representations of textual data during language...
Kernel methods enable the direct usage of structured representations of textual data during language...
Kernel methods enable the direct usage of structured representations of textual data during language...
Kernel methods enable the direct usage of structured representations of textual data during language...
This thesis aims to study recent theoretical work in machine learning research that seeks to better ...
We review machine learning methods employing positive definite kernels. These methods formulate lear...
We review machine learning methods employing positive definite kernels. These methods formulate lear...
We review machine learning methods employing positive definite kernels. These methods formulate lear...
Kernel-based and Deep Learning methods are two of the most popular approaches in Computational Natur...
Kernel-based and Deep Learning methods are two of the most popular approaches in Computational Natur...
Abstract We introduce scalable deep kernels, which combine the structural properties of deep learnin...
Kernel-based and Deep Learning methods are two of the most popular approaches in Computational Natur...
Kernel-based and Deep Learning methods are two of the most popular approaches in Computational Natur...
Kernel methods enable the direct usage of structured representations of textual data during language...
Kernel methods enable the direct usage of structured representations of textual data during language...
Kernel methods enable the direct usage of structured representations of textual data during language...
Kernel methods enable the direct usage of structured representations of textual data during language...
Kernel methods enable the direct usage of structured representations of textual data during language...
Kernel methods enable the direct usage of structured representations of textual data during language...
This thesis aims to study recent theoretical work in machine learning research that seeks to better ...