1. Hyperseed: Unsupervised Learning With Vector Symbolic Architectures
- Author
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Osipov, Evgeny, Kahawala, Sachin, Haputhanthri, Dilantha, Kempitiya, Thimal, De Silva, Daswin, Alahakoon, Damminda, and Kleyko, Denis
- Abstract
Motivated by recent innovations in biologically inspired neuromorphic hardware, this article presents a novel unsupervised machine learning algorithm named Hyperseed that draws on the principles of vector symbolic architectures (VSAs) for fast learning of a topology preserving feature map of unlabeled data. It relies on two major operations of VSA, binding and bundling. The algorithmic part of Hyperseed is expressed within the Fourier holographic reduced representations (FHRR) model, which is specifically suited for implementation on spiking neuromorphic hardware. The two primary contributions of the Hyperseed algorithm are few-shot learning and a learning rule based on single vector operation. These properties are empirically evaluated on synthetic datasets and on illustrative benchmark use cases, IRIS classification, and a language identification task using the
$n$ - Published
- 2024
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