36 pagesInternational audienceTree data are ubiquitous because they model a large variety of situations, e.g., the architecture of plants, the secondary structure of RNA, or the hierarchy of XML files. Nevertheless, the analysis of these non-Euclidean data is difficult per se. In this paper, we focus on the subtree kernel that is a convolution kernel for tree data introduced by Vishwanathan and Smola in the early 2000's. More precisely, we investigate the influence of the weight function from a theoretical perspective and in real data applications. We establish on a 2-classes stochastic model that the performance of the subtree kernel is improved when the weight of leaves vanishes, which motivates the definition of a new weight function, le...
Abstract — Kernel methods are effective approaches to the modeling of structured objects in learning...
Kernel methods are popular and effective techniques for learning on structured data, such as trees a...
The definition of appropriate kernel functions is crucial for the performance of a kernel method. In...
36 pagesInternational audienceTree data are ubiquitous because they model a large variety of situati...
International audienceKernel methods are one of the main techniques used for learning on tree struct...
International audienceTree kernels have demonstrated their ability to deal with hierarchical data, a...
We introduce a family of kernels on discrete data structures within the general class of decompositi...
In this article, we propose fast subtree kernels on graphs. On graphs with n nodes and m edges and m...
We extend tree-based methods to the prediction of structured outputs using a kernelization of the al...
Tree ensembles can be interpreted as implicit kernel generators, where the ensuing proximity matrix ...
Graph is an usual representation of relational data, which are ubiquitous in manydomains such as mol...
The subpath kernel is a useful positive definite kernel, which takes arbitrary rooted trees as input...
Kernel methods are effective approaches to the modeling of structured objects in learning algorithms...
Machine learning comprises a series of techniques for automatic extraction of meaningful information...
Funding Information: D. H. N. has been supported in part by Otsuka Toshimi scholarship and JSPS Rese...
Abstract — Kernel methods are effective approaches to the modeling of structured objects in learning...
Kernel methods are popular and effective techniques for learning on structured data, such as trees a...
The definition of appropriate kernel functions is crucial for the performance of a kernel method. In...
36 pagesInternational audienceTree data are ubiquitous because they model a large variety of situati...
International audienceKernel methods are one of the main techniques used for learning on tree struct...
International audienceTree kernels have demonstrated their ability to deal with hierarchical data, a...
We introduce a family of kernels on discrete data structures within the general class of decompositi...
In this article, we propose fast subtree kernels on graphs. On graphs with n nodes and m edges and m...
We extend tree-based methods to the prediction of structured outputs using a kernelization of the al...
Tree ensembles can be interpreted as implicit kernel generators, where the ensuing proximity matrix ...
Graph is an usual representation of relational data, which are ubiquitous in manydomains such as mol...
The subpath kernel is a useful positive definite kernel, which takes arbitrary rooted trees as input...
Kernel methods are effective approaches to the modeling of structured objects in learning algorithms...
Machine learning comprises a series of techniques for automatic extraction of meaningful information...
Funding Information: D. H. N. has been supported in part by Otsuka Toshimi scholarship and JSPS Rese...
Abstract — Kernel methods are effective approaches to the modeling of structured objects in learning...
Kernel methods are popular and effective techniques for learning on structured data, such as trees a...
The definition of appropriate kernel functions is crucial for the performance of a kernel method. In...