2021
DOI: 10.48550/arxiv.2102.02431
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Graph Coding for Model Selection and Anomaly Detection in Gaussian Graphical Models

Mojtaba Abolfazli,
Anders Host-Madsen,
June Zhang
et al.

Abstract: A classic application of description length is for model selection with the minimum description length (MDL) principle. The focus of this paper is to extend description length for data analysis beyond simple model selection and sequences of scalars. More specifically, we extend the description length for data analysis in Gaussian graphical models. These are powerful tools to model interactions among variables in a sequence of i.i.d Gaussian data in the form of a graph. Our method uses universal graph coding me… Show more

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