Abstract Graph kernels have become an established and widely-used technique for solving classification tasks on graphs. This survey gives a comprehensive overview of techniques for kernel-based graph classification developed in the past 15 years. We describe and categorize graph kernels based on properties inherent to their design, such as the nature of their extracted graph features, their method of computation and their applicability to problems in practice. In an extensive experimental evaluation, we study the classification accuracy of a large suite of graph kernels on established benchmarks as well as new datasets. We compare the performance of popular kernels with several baseline methods and study the effect of applyin...
In this article, we propose a family of efficient kernels for large graphs with discrete node labels...
In this article, we propose a family of efficient kernels for large graphs with discrete node labels...
In this article, we propose a family of efficient kernels for large graphs with discrete node labels...
Graph kernels have become an established and widely-used technique for solving classification tasks ...
In the real world all events are connected. There is a hidden network of dependencies that governs b...
Graph kernels are powerful tools to bridge the gap between machine learning and data encoded as grap...
In many application areas, graphs are a very natural way of representing structural aspects of a dom...
We consider the problem of classifying graphs using graph kernels. We define a new graph kernel, cal...
Graphs are information-rich structures, but their complexity makes them difficult to analyze. Given ...
Data Mining and Machine Learning are in the midst of a \structured revolution" [1]. As we can\ud rep...
Graph kernels have been studied for a long time and applied among others for graph classification. I...
Graphs are information-rich structures, but their complexity makes them difficult to analyze. Given ...
Applications of machine learning methods increasingly deal with graph structured data through kernel...
In the graph classification problem, given is a family of graphs and a group of different categories...
In this article, we propose a family of efficient kernels for large graphs with discrete node labels...
In this article, we propose a family of efficient kernels for large graphs with discrete node labels...
In this article, we propose a family of efficient kernels for large graphs with discrete node labels...
In this article, we propose a family of efficient kernels for large graphs with discrete node labels...
Graph kernels have become an established and widely-used technique for solving classification tasks ...
In the real world all events are connected. There is a hidden network of dependencies that governs b...
Graph kernels are powerful tools to bridge the gap between machine learning and data encoded as grap...
In many application areas, graphs are a very natural way of representing structural aspects of a dom...
We consider the problem of classifying graphs using graph kernels. We define a new graph kernel, cal...
Graphs are information-rich structures, but their complexity makes them difficult to analyze. Given ...
Data Mining and Machine Learning are in the midst of a \structured revolution" [1]. As we can\ud rep...
Graph kernels have been studied for a long time and applied among others for graph classification. I...
Graphs are information-rich structures, but their complexity makes them difficult to analyze. Given ...
Applications of machine learning methods increasingly deal with graph structured data through kernel...
In the graph classification problem, given is a family of graphs and a group of different categories...
In this article, we propose a family of efficient kernels for large graphs with discrete node labels...
In this article, we propose a family of efficient kernels for large graphs with discrete node labels...
In this article, we propose a family of efficient kernels for large graphs with discrete node labels...
In this article, we propose a family of efficient kernels for large graphs with discrete node labels...