Flexible Online Representation Learning Based on Similarity Matching

June 01, 2026 ยท Grace Period ยท ๐Ÿ› IJCNN 2023 but not presented owing to visa issues

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Authors Shagesh Sridharan, Yanis Bahroun, Anirvan M. Sengupta arXiv ID 2606.01546 Category cs.LG: Machine Learning Citations 0 Venue IJCNN 2023 but not presented owing to visa issues
Abstract
Sparse high-dimensional representations are conducive to uncovering nontrivial structures in unsupervised exploration of data. Such a representation can deal with the dense connectivity in graphs relevant to community detection problems. However, sparse high-dimensional representations are capable of doing more, including manifold tiling and feature learning. Conventional algorithms optimize in the space of computationally intractable completely positive matrices or relax the problem to the space of doubly nonnegative matrices that scale with sample size in a way rendering them impractical for large data sets. Some of these methods also impose a row sum constraint, such as double stochasticity. Row sum constraints have the added advantage of being shift-invariant, in the context of manifold tiling. Constraints on the row sum of output similarity matrices require nontrivial online learning rules. Addressing these needs, we propose a versatile online biologically plausible learning algorithm capable of learning sparse shift-invariant representations, useful for clustering, manifold tiling, or sparse coding, depending on the data structure.
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