HyperSeed: Unsupervised Learning with Vector Symbolic Architectures
Osipov, Evgeny, Kahawala, Sachin, Haputhanthri, Dilantha, Kempitiya, Thimal, De Silva, Daswin, Alahakoon, Damminda, Kleyko, Denis
–arXiv.org Artificial Intelligence
Across all experiments, Hyperseed convincingly machine learning and robotics context is currently gaining a demonstrates its key novelties of learning from a few input great momentum [1]-[6]. In classification tasks, the use of vectors and single vector operation learning rule, both of which VSA leads to order of magnitude increase in energy efficiency contribute towards reduced time and computation complexity. of computations on the one hand and natively enables oneshot The paper is structured as follows. Section II describes and multitask learning on the other [7]. It is prospected the related work relevant to Hyperseed operations. The used that VSA will play a key role in the development of novel methods including the fundamentals of VSA are presented neuromorphic computer architectures [8] as an algorithmic in Section III. Section IV presents the main contribution - abstraction [9], [10]. The main contribution of this paper is the method for unsupervised learning Hyperseed. Section V a novel algorithm for unsupervised learning called Hyperseed, reports the results of the performance evaluation the experiments.
arXiv.org Artificial Intelligence
Oct-15-2021
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