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Nonnegative Matrix Factorization in Dimensionality Reduction: A Survey

Farid Saberi-Movahed, Kamal Berahmand, Razieh Sheikhpour, Yuefeng Li, Shirui Pan, Mahdi Jalili

2025ACM Computing Surveys24 citationsDOI

Abstract

Dimensionality Reduction plays a pivotal role in improving feature learning accuracy and reducing training time by eliminating redundant features, noise, and irrelevant data. Nonnegative Matrix Factorization (NMF) has emerged as a popular and powerful method for dimensionality reduction. Despite its extensive use, there remains a need for a comprehensive analysis of NMF in the context of dimensionality reduction. To bridge this gap, this article presents a comprehensive survey of NMF, focusing on its applications in both feature extraction and feature selection. We propose a novel classification scheme for dimensionality reduction to enhance understanding of its core principles. Subsequently, we delve into a thorough summary of diverse NMF approaches used for feature extraction and selection. Furthermore, we discuss the latest research trends and potential future directions for leveraging NMF in dimensionality reduction, aiming to highlight areas that need further exploration and development.

Topics & Concepts

Dimensionality reductionCurse of dimensionalityNon-negative matrix factorizationComputer scienceMatrix decompositionArtificial intelligenceContext (archaeology)Feature extractionDimension (graph theory)Pattern recognition (psychology)Feature (linguistics)Intrinsic dimensionMachine learningFactorizationScheme (mathematics)Data miningFeature selectionFeature vectorNonlinear dimensionality reductionMatrix (chemical analysis)Principal component analysisCore (optical fiber)Feature learningClustering high-dimensional dataFace and Expression RecognitionSparse and Compressive Sensing TechniquesAdvanced Data Compression Techniques
Nonnegative Matrix Factorization in Dimensionality Reduction: A Survey | Litcius