Structural kernels are a flexible learning paradigm that has been widely used in Natural Language Processing. However, the problem of model selection in kernel-based methods is usually overlooked. Previous approaches mostly rely on setting default values for kernel hyperparameters or using grid search, which is slow and coarse-grained. In contrast, Bayesian methods allow efficient model selection by maximizing the evidence on the training data through gradient-based methods. In this paper we show how to perform this in the context of structural kernels by using Gaussian Processes. Experimental results on tree kernels show that this procedure results in better prediction performance compared to hyperparameter optimization via grid search. Th...
Traditional methods for kernel selection rely on parametric kernel functions or a combination thereo...
We describe the application of kernel methods to Natural Language Pro-cessing (NLP) problems. In man...
Structured output prediction in machine learning is the study of learning to predict complex objects...
Structural kernels are a flexible learning paradigm that has been widely used in Natural Language Pr...
Kernel methods are popular and effective techniques for learning on structured data, such as trees a...
Kernel methods are a class of non-parametric learning techniques relying on kernels. A kernel genera...
Convolution kernels, such as sequence and tree kernels, are advantageous for both the concept and ac...
Kernel methods are effective approaches to the modeling of structured objects in learning algorithms...
Abstract — Kernel methods are effective approaches to the modeling of structured objects in learning...
© Springer-Verlag Berlin Heidelberg 2015. This chapter addresses the study of kernel methods, a clas...
Gaussian processes (GPs) provide a principled, practical, probabilistic approach to learning in kern...
Kernel-based and Deep Learning methods are two of the most popular approaches in Computational Natur...
Abstract Despite the success of kernel-based nonparametric methods, kernel selection still requires ...
A wide range of statistical and machine learning problems involve learning one or multiple latent fu...
We develop a general theoretical framework for statistical logical learning with kernels based on dy...
Traditional methods for kernel selection rely on parametric kernel functions or a combination thereo...
We describe the application of kernel methods to Natural Language Pro-cessing (NLP) problems. In man...
Structured output prediction in machine learning is the study of learning to predict complex objects...
Structural kernels are a flexible learning paradigm that has been widely used in Natural Language Pr...
Kernel methods are popular and effective techniques for learning on structured data, such as trees a...
Kernel methods are a class of non-parametric learning techniques relying on kernels. A kernel genera...
Convolution kernels, such as sequence and tree kernels, are advantageous for both the concept and ac...
Kernel methods are effective approaches to the modeling of structured objects in learning algorithms...
Abstract — Kernel methods are effective approaches to the modeling of structured objects in learning...
© Springer-Verlag Berlin Heidelberg 2015. This chapter addresses the study of kernel methods, a clas...
Gaussian processes (GPs) provide a principled, practical, probabilistic approach to learning in kern...
Kernel-based and Deep Learning methods are two of the most popular approaches in Computational Natur...
Abstract Despite the success of kernel-based nonparametric methods, kernel selection still requires ...
A wide range of statistical and machine learning problems involve learning one or multiple latent fu...
We develop a general theoretical framework for statistical logical learning with kernels based on dy...
Traditional methods for kernel selection rely on parametric kernel functions or a combination thereo...
We describe the application of kernel methods to Natural Language Pro-cessing (NLP) problems. In man...
Structured output prediction in machine learning is the study of learning to predict complex objects...