Graph Classification And Clustering Based On Vector Space Embedding / Najlacnejšie knihy
Graph Classification And Clustering Based On Vector Space Embedding

Code: 05070120

Graph Classification And Clustering Based On Vector Space Embedding

by Kaspar Riesen, Horst Bunke

This book is concerned with a fundamentally novel approach to graph-based pattern recognition based on vector space embedding of graphs. It aims at condensing the high representational power of graphs into a computationally effici ... more

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Book synopsis

This book is concerned with a fundamentally novel approach to graph-based pattern recognition based on vector space embedding of graphs. It aims at condensing the high representational power of graphs into a computationally efficient and mathematically convenient feature vector. This volume utilizes the dissimilarity space representation originally proposed by Duin and Pekalska to embed graphs in real vector spaces. Such an embedding gives one access to all algorithms developed in the past for feature vectors, which has been the predominant representation formalism in pattern recognition and related areas for a long time.

Book details

Book category Books in English Computing & information technology Computer science Artificial intelligence

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