Topological Dictionary Learning
By: Enrico Grimaldi, Claudio Battiloro, Paolo Di Lorenzo
Potential Business Impact:
Finds hidden patterns in connected data.
The aim of this paper is to introduce a novel dictionary learning algorithm for sparse representation of signals defined over combinatorial topological spaces, specifically, regular cell complexes. Leveraging Hodge theory, we embed topology into the dictionary structure via concatenated sub-dictionaries, each as a polynomial of Hodge Laplacians, yielding localized spectral topological filter frames. The learning problem is cast to jointly infer the underlying cell complex and optimize the dictionary coefficients and the sparse signal representation. We efficiently solve the problem via iterative alternating algorithms. Numerical results on both synthetic and real data show the effectiveness of the proposed procedure in jointly learning the sparse representations and the underlying relational structure of topological signals.
Similar Papers
Matched Topological Subspace Detector
Machine Learning (Stat)
Finds weird patterns in complex data networks.
Online multidimensional dictionary learning
Numerical Analysis
Improves how computers understand complex data.
Kernel Recursive Least Squares Dictionary Learning Algorithm
Machine Learning (CS)
Teaches computers to learn patterns faster.