Between steps: Intermediate relaxations between big-M and convex hull formulations

01/29/2021
by   Jan Kronqvist, et al.
0

This work develops a class of relaxations in between the big-M and convex hull formulations of disjunctions, drawing advantages from both. The proposed "P-split" formulations split convex additively separable constraints into P partitions and form the convex hull of the partitioned disjuncts. Parameter P represents the trade-off of model size vs. relaxation strength. We examine the novel formulations and prove that, under certain assumptions, the relaxations form a hierarchy starting from a big-M equivalent and converging to the convex hull. We computationally compare the proposed formulations to big-M and convex hull formulations on a test set including: K-means clustering, P_ball problems, and ReLU neural networks. The computational results show that the intermediate P-split formulations can form strong outer approximations of the convex hull with fewer variables and constraints than the extended convex hull formulations, giving significant computational advantages over both the big-M and convex hull.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/10/2022

P-split formulations: A class of intermediate formulations between big-M and convex hull for disjunctive constraints

We develop a class of mixed-integer formulations for disjunctive constra...
research
07/11/2020

Convex Hulls for Graphs of Quadratic Functions With Unit Coefficients: Even Wheels and Complete Split Graphs

We study the convex hull of the graph of a quadratic function f(𝐱)=∑_ij∈...
research
03/27/2013

Separable and transitive graphoids

We examine three probabilistic formulations of the sentence a and b are ...
research
09/26/2013

Convex Relaxations of Bregman Divergence Clustering

Although many convex relaxations of clustering have been proposed in the...
research
02/08/2021

Partition-based formulations for mixed-integer optimization of trained ReLU neural networks

This paper introduces a class of mixed-integer formulations for trained ...
research
06/30/2020

Ideal formulations for constrained convex optimization problems with indicator variables

Motivated by modern regression applications, in this paper, we study the...
research
11/11/2020

Optimization under rare chance constraints

Chance constraints provide a principled framework to mitigate the risk o...

Please sign up or login with your details

Forgot password? Click here to reset