Deep Learning for Explicitly Modeling Optimization Landscapes

03/21/2017
by   Shumeet Baluja, et al.
0

In all but the most trivial optimization problems, the structure of the solutions exhibit complex interdependencies between the input parameters. Decades of research with stochastic search techniques has shown the benefit of explicitly modeling the interactions between sets of parameters and the overall quality of the solutions discovered. We demonstrate a novel method, based on learning deep networks, to model the global landscapes of optimization problems. To represent the search space concisely and accurately, the deep networks must encode information about the underlying parameter interactions and their contributions to the quality of the solution. Once the networks are trained, the networks are probed to reveal parameter combinations with high expected performance with respect to the optimization task. These estimates are used to initialize fast, randomized, local search algorithms, which in turn expose more information about the search space that is subsequently used to refine the models. We demonstrate the technique on multiple optimization problems that have arisen in a variety of real-world domains, including: packing, graphics, job scheduling, layout and compression. The problems include combinatoric search spaces, discontinuous and highly non-linear spaces, and span binary, higher-cardinality discrete, as well as continuous parameters. Strengths, limitations, and extensions of the approach are extensively discussed and demonstrated.

READ FULL TEXT
research
06/26/2015

ASOC: An Adaptive Parameter-free Stochastic Optimization Techinique for Continuous Variables

Stochastic optimization is an important task in many optimization proble...
research
07/17/2022

Supplementing Recurrent Neural Networks with Annealing to Solve Optimization Problems

Combinatorial optimization problems can be solved by heuristic algorithm...
research
07/17/2009

Improvements for multi-objective flow shop scheduling by Pareto Iterated Local Search

The article describes the proposition and application of a local search ...
research
03/28/2023

Optimisation via encodings: a renormalisation group perspective

The traditional way of tackling discrete optimization problems is by usi...
research
04/20/2015

Negatively Correlated Search

Evolutionary Algorithms (EAs) have been shown to be powerful tools for c...
research
12/15/2021

Predicting the utility of search spaces for black-box optimization: a simple, budget-aware approach

Black box optimization requires specifying a search space to explore for...
research
11/14/2022

Adaptive search space decomposition method for pre- and post- buckling analyses of space truss structures

The paper proposes a novel adaptive search space decomposition method an...

Please sign up or login with your details

Forgot password? Click here to reset