2022
DOI: 10.48550/arxiv.2203.07975
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Categorical Representation Learning and RG flow operators for algorithmic classifiers

Abstract: Following the earlier formalism of the categorical representation learning [25] by the first two authors, we discuss the construction of the "RG-flow based categorifier". Borrowing ideas from theory of renormalization group flows (RG) in quantum field theory, holographic duality, and hyperbolic geometry, and mixing them with neural ODE's, we construct a new algorithmic natural language processing (NLP) architecture, called the RG-flow categorifier or for short the RG categorifier, which is capable of data clas… Show more

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