Skip to content

erichanslee/active-search-metric-diversity

Repository files navigation

WinterSim Repo

Code release for the paper Achieving Diversity in Objective Space for Sample-Efficient Search of Multiobjective Optimization Problems, published in Winter Sim 2022. The paper and this code release develop a method similar to active search. The method allows users to input a multiobjective design or optimization problem and obtain a set of diverse solutions. The diversity of this solution set is important to a range of scientific and engineering applications.

Installation

Run python setup.py install in the command line.

Directory Structure

The src/ directory is subdivided as follows:

  • src/acquisitions/ contains implementations of all acquisition functions.
  • src/model/ contains our GP implementation. By default, this implementation uses a constant mean function and the Matern 5/2 kernel.
  • src/runners/ contains the BO runners, which are invoked to run a full BO loop.
  • src/test_problems/ contains implementations of synthetic functions, which are used to benchmark BO acquisition functions.

Demos

We have a few simple demos in the demos/ folder, which you should run to get started.

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages