Machine learning deals with datasets characterized by high dimensionality. However, in many cases, the intrinsic dimensionality of the datasets is surprisingly low. For example, the dimensionality of a robot's perception space can be large and multi-modal but its variables can have more or less complex non-linear interdependencies. Thus multidimensional data point clouds can be effectively located in the vicinity of principal varieties possessing locally small dimensionality, but having a globally complicated organization which is sometimes difficult to represent with regular mathematical objects (such as manifolds). We review modern machine learning approaches for extracting low-dimensional geometries from multi-dimensional data and their applications in various scientific fields.
CITATION STYLE
Bac, J., & Zinovyev, A. (2019). Lizard brain: Tackling locally low-dimensional yet globally complex organization of multi-dimensional datasets. Frontiers in Neurorobotics, 13. https://doi.org/10.3389/fnbot.2019.00110
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