Magnitude of arithmetic scalar and matrix categories
Abstract
Tools for constructing enriched categories with scalar and matrix operations are developed to reveal outliers in various applications such as computer programs, neural networks, and communication networks.
We develop tools for explicitly constructing categories enriched over generating data and that compose via ordinary scalar and matrix arithmetic arithmetic operations. We characterize meaningful size maps, weightings, and magnitude that reveal features analogous to outliers that these same notions have previously been shown to reveal in the context of metric spaces. Throughout, we provide examples of such "outlier detection" relevant to the analysis of computer programs, neural networks, cyber-physical systems, and networks of communications channels.
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