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Principled approach to the selection of the embedding dimension of networks

Weiwei Gu, Aditya Tandon, Yong‐Yeol Ahn, Filippo Radicchi

2021Nature Communications61 citationsDOIOpen Access PDF

Abstract

Network embedding is a general-purpose machine learning technique that encodes network structure in vector spaces with tunable dimension. Choosing an appropriate embedding dimension - small enough to be efficient and large enough to be effective - is challenging but necessary to generate embeddings applicable to a multitude of tasks. Existing strategies for the selection of the embedding dimension rely on performance maximization in downstream tasks. Here, we propose a principled method such that all structural information of a network is parsimoniously encoded. The method is validated on various embedding algorithms and a large corpus of real-world networks. The embedding dimension selected by our method in real-world networks suggest that efficient encoding in low-dimensional spaces is usually possible.

Topics & Concepts

EmbeddingDimension (graph theory)Computer scienceMaximizationSelection (genetic algorithm)Theoretical computer scienceEncoding (memory)Artificial intelligenceIntrinsic dimensionVector spaceMachine learningMathematical optimizationMathematicsCurse of dimensionalityGeometryPure mathematicsAdvanced Graph Neural NetworksComplex Network Analysis TechniquesDomain Adaptation and Few-Shot Learning