NCDL: A Framework for Deep Learning on non-Cartesian Lattices
–Neural Information Processing Systems
The use of non-Cartesian grids is a niche but important topic in sub-fields of the numerical sciences, such as simulation and scientific visualization. However, non-Cartesian approaches are virtually unexplored in machine learning. This is likely due to the difficulties in the representation of data on non-Cartesian domains and the lack of support for standard machine learning operations on non-Cartesian data. This paper proposes a new data structure called the lattice tensor which generalizes traditional tensor spatio-temporal operations to lattice tensors, enabling the use of standard machine learning algorithms on non-Cartesian data. We introduce a software library that implements this new data structure and demonstrate its effectiveness on various problems. Our method provides a general framework for machine learning on non-Cartesian domains, addressing the challenges mentioned above and filling a gap in the current literature.
Neural Information Processing Systems
May-25-2025, 17:22:50 GMT
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- North America > Canada > Alberta > Census Division No. 6 > Calgary Metropolitan Region > Calgary (0.14)
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