Litcius/Paper detail

Manifold Learning: What, How, and Why

Marina Meilă, Hanyu Zhang

2023Annual Review of Statistics and Its Application103 citationsDOIOpen Access PDF

Abstract

Manifold learning (ML), also known as nonlinear dimension reduction, is a set of methods to find the low-dimensional structure of data. Dimension reduction for large, high-dimensional data is not merely a way to reduce the data; the new representations and descriptors obtained by ML reveal the geometric shape of high-dimensional point clouds and allow one to visualize, denoise, and interpret them. This review presents the underlying principles of ML, its representative methods, and their statistical foundations, all from a practicing statistician's perspective. It describes the trade-offs and what theory tells us about the parameter and algorithmic choices we make in order to obtain reliable conclusions.

Topics & Concepts

Nonlinear dimensionality reductionStatisticianDimensionality reductionDimension (graph theory)Computer scienceManifold (fluid mechanics)Point (geometry)Perspective (graphical)Data setSet (abstract data type)Point cloudClustering high-dimensional dataReduction (mathematics)Data pointArtificial intelligenceData scienceTheoretical computer scienceMathematicsStatisticsPure mathematicsGeometryCluster analysisProgramming languageEngineeringMechanical engineeringSoil Geostatistics and MappingRemote Sensing and LiDAR ApplicationsRemote Sensing in Agriculture