Electronic Proceedings in Theoretical Computer Science (Oct 2018)

Convex Functions in ACL2(r)

  • Carl Kwan,
  • Mark R. Greenstreet

DOI
https://doi.org/10.4204/EPTCS.280.10
Journal volume & issue
Vol. 280, no. Proc. ACL2 2018
pp. 128 – 142

Abstract

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This paper builds upon our prior formalisation of R^n in ACL2(r) by presenting a set of theorems for reasoning about convex functions. This is a demonstration of the higher-dimensional analytical reasoning possible in our metric space formalisation of R^n. Among the introduced theorems is a set of equivalent conditions for convex functions with Lipschitz continuous gradients from Yurii Nesterov's classic text on convex optimisation. To the best of our knowledge a full proof of the theorem has yet to be published in a single piece of literature. We also explore "proof engineering" issues, such as how to state Nesterov's theorem in a manner that is both clear and useful.