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Evaluation of Dimensionality Reduction Techniques for Big data

Raji Ramachandran, Gopika Ravichandran, Aswathi Raveendran

202020 citationsDOI

Abstract

In this digital era, big data has very high dimension and requires large amount of space for its data storage. Hence a lossless data interpretation will be difficult when big data contains large dimension. But, all these dimensions in big data may not be relevant or they may be interrelated and hence redundancy may exist in attribute set. Dimensionality reduction is a technique which focusses on downsizing the attributes and complication of a high dimensional data. In this paper, a detailed study of different dimensionality reduction techniques namely principal component analysis (PCA), linear discriminant analysis (LDA), kernel principal component analysis (KPCA), singular value decomposition (SVD), independent component analysis (ICA) has been proposed. Furthermore, it also provides comparative analysis based on various parameters.

Topics & Concepts

Dimensionality reductionPrincipal component analysisSingular value decompositionKernel principal component analysisComputer scienceBig dataLinear discriminant analysisRedundancy (engineering)Curse of dimensionalityArtificial intelligencePattern recognition (psychology)Data miningDimension (graph theory)Clustering high-dimensional dataIntrinsic dimensionKernel methodMathematicsSupport vector machineCluster analysisOperating systemPure mathematicsFace and Expression RecognitionSpectroscopy and Chemometric AnalysesNeural Networks and Applications
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