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Efficient Frequent Subtree Mining Beyond Forests eBook

language: english
Publisher: SAGE PUBLICATIONS, June of 2020 ‧
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A common paradigm in distance-based learning is to embed the instance space into a feature space equipped with a metric and define the dissimilarity between instances by the distance of their images in the feature space. Frequent connected subgraphs are sometimes used to define such feature spaces if the instances are graphs, but identifying the set of frequent connected subgraphs and subsequently computing embeddings for graph instances is computationally intractable. As a result, existing frequent subgraph mining algorithms either restrict the structural complexity of the instance graphs or require exponential delay between

Efficient Frequent Subtree Mining Beyond Forests

Property Description
ISBN: 9781643680798
Publisher: SAGE PUBLICATIONS
Release Date: June of 2020
Language: English
Pages: 188
Format: eBook
File Format and Compatibility: PDF para ADE
Collection: Dissertations In Artificial Intelligence (Ios Press)
Categories: eBooks in English > Science > Mathematics
eBooks in English > Computing > Other Applications
EAN: 9781643680798