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Intrinsic Dimension Estimation for Discrete Metrics

Iuri Macocco, Aldo Glielmo, Jacopo Grilli, Alessandro Laio

2023Physical Review Letters16 citationsDOIOpen Access PDF

Abstract

Real-world datasets characterized by discrete features are ubiquitous: from categorical surveys to clinical questionnaires, from unweighted networks to DNA sequences. Nevertheless, the most common unsupervised dimensional reduction methods are designed for continuous spaces, and their use for discrete spaces can lead to errors and biases. In this Letter we introduce an algorithm to infer the intrinsic dimension (ID) of datasets embedded in discrete spaces. We demonstrate its accuracy on benchmark datasets, and we apply it to analyze a metagenomic dataset for species fingerprinting, finding a surprisingly small ID, of order 2. This suggests that evolutive pressure acts on a low-dimensional manifold despite the high dimensionality of sequences' space.

Topics & Concepts

Dimensionality reductionIntrinsic dimensionCategorical variableBenchmark (surveying)Computer scienceDimension (graph theory)Curse of dimensionalityNonlinear dimensionality reductionManifold (fluid mechanics)Artificial intelligencePattern recognition (psychology)Data miningSpace (punctuation)AlgorithmMachine learningMathematicsCombinatoricsGeographyGeodesyOperating systemMechanical engineeringEngineeringGene expression and cancer classificationBioinformatics and Genomic NetworksGenomics and Phylogenetic Studies