2024
DOI: 10.1109/access.2024.3356572
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A Graph Classification Method Based on Support Vector Machines and Locality-Sensitive Hashing

María D. Gonzalez-Lima,
Carenne C. Ludeña,
Gibran G. Otazo-Sanchez

Abstract: Graphs classification is a relevant problem that arises in many disciplines. Using graphs directly instead of vectorization allows to exploit the intrinsic representations of the data. Support Vector Machines (SVM) is a supervised learning method based on the use of graph kernel functions used for this task. One of the problems of SVM, as the number of samples increases, is the cost of storing and solving the optimization problem related to SVM. In this work we propose a method capable of finding a small repre… Show more

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