Jan. 31, 2024, 3:46 p.m. | Navid Ziaei Behzad Nazari Ali Yousefi

cs.LG updates on arXiv.org arxiv.org

Extracting meaningful information from high-dimensional data poses a formidable modeling challenge, particularly when the data is obscured by noise or represented through different modalities. In this research, we propose a novel non-parametric modeling approach, leveraging the Gaussian Process (GP), to characterize high-dimensional data by mapping it to a latent low-dimensional manifold. This model, named the Latent Discriminative Generative Decoder (LDGD), utilizes both the data (or its features) and associated labels (such as category or stimulus) in the manifold discovery process. …

bayesian challenge cs.lg data information latent variable model mapping modeling noise non-parametric novel parametric process research through

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