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Finding Structure and Causality in Linear Programs

29 March 2022
Matej Zečević
Florian Peter Busch
Devendra Singh Dhami
Kristian Kersting
    CML
ArXiv (abs)PDFHTML
Abstract

Linear Programs (LP) are celebrated widely, particularly so in machine learning where they have allowed for effectively solving probabilistic inference tasks or imposing structure on end-to-end learning systems. Their potential might seem depleted but we propose a foundational, causal perspective that reveals intriguing intra- and inter-structure relations for LP components. We conduct a systematic, empirical investigation on general-, shortest path- and energy system LPs.

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