2 research outputs found

    Comparison of Matrix Dimensionality Reduction Methods in Uncovering Latent Structures in the Data

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    Matrix decomposition methods: Singular Value Decomposition (SVD) and Semi Discrete Decomposition (SDD) are proved to be successful in dimensionality reduction. However, to the best of our knowledge, no empirical results are presented and no comparison between these methods is done to uncover latent structures in the data. In this paper, we present how these methods can be used to identify and visualise latent structures in the time series data. Results on a high dimensional dataset demonstrate that SVD is more successful in uncovering the latent structures.Data mining, dimensionality reduction, principal component analysis, Semi Discrete Decomposition, Singular Value Decomposition
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