The recent development of graph kernel functions has made it possible to apply well-established machine learning methods to graphs. However, to allow for analyses that yield a graph as a result, it is necessary to solve the so-called pre-image problem: to reconstruct a graph from its feature space representation induced by the kernel. Here, we suggest a practical solution to this problem
Nowadays, developing effective techniques able to deal with data coming from structured domains is b...
Graphs are able to represent a wide range of real-world data due to the nature of their structure an...
International audienceWhile the nonlinear mapping from the input space to the feature space is centr...
The recent development of graph kernel functions has made it possible to apply well-established mach...
We consider the problem of reconstructing patterns from a feature map. Learning algorithms using ker...
We consider the problem of reconstructing patterns from a feature map. Learning algorithms using ker...
We consider the problem of reconstructing patterns from a feature map. Learning algorithms using ...
In this chapter we are concerned with the problem of reconstructing patterns from their representati...
In this chapter we are concerned with the problem of reconstructing patterns from their representati...
In the real world all events are connected. There is a hidden network of dependencies that governs b...
In many application areas, graphs are a very natural way of representing structural aspects of a dom...
Graphs are able to represent a wide range of real-world data due to the nature of their structure an...
Nowadays, developing effective techniques able to deal with data coming from structured domains is b...
Nowadays, developing effective techniques able to deal with data coming from structured domains is b...
Nowadays, developing effective techniques able to deal with data coming from structured domains is b...
Nowadays, developing effective techniques able to deal with data coming from structured domains is b...
Graphs are able to represent a wide range of real-world data due to the nature of their structure an...
International audienceWhile the nonlinear mapping from the input space to the feature space is centr...
The recent development of graph kernel functions has made it possible to apply well-established mach...
We consider the problem of reconstructing patterns from a feature map. Learning algorithms using ker...
We consider the problem of reconstructing patterns from a feature map. Learning algorithms using ker...
We consider the problem of reconstructing patterns from a feature map. Learning algorithms using ...
In this chapter we are concerned with the problem of reconstructing patterns from their representati...
In this chapter we are concerned with the problem of reconstructing patterns from their representati...
In the real world all events are connected. There is a hidden network of dependencies that governs b...
In many application areas, graphs are a very natural way of representing structural aspects of a dom...
Graphs are able to represent a wide range of real-world data due to the nature of their structure an...
Nowadays, developing effective techniques able to deal with data coming from structured domains is b...
Nowadays, developing effective techniques able to deal with data coming from structured domains is b...
Nowadays, developing effective techniques able to deal with data coming from structured domains is b...
Nowadays, developing effective techniques able to deal with data coming from structured domains is b...
Graphs are able to represent a wide range of real-world data due to the nature of their structure an...
International audienceWhile the nonlinear mapping from the input space to the feature space is centr...