Latent-Action Monte-Carlo Beam Search with Density-Adaption
LAMBDA
is a SMBO(Sequential Model-based Black-Box Optimization) Method derived from LA-MCTS for both black-box optimization and coverage problem. This repo contains the official implementation of python
in this pre-print, as well as some artificial functions and test problems to evaluate the algorithm. Feel free to reproduce our results on test functions in 5 minutes.
NOTICE This repo is still in development, and the dev
branch could have some unknown bugs. We would appreciate it much if you find one and issue us.
LAMBDA
is designed mainly for the Black-Box Coverage (BBC) problem, which means, to estimate the level-set of the inequality
Here is the benchmark results of ours method with a bunch of classical or SOTA methods such as TuRBO, BO, GA, etc.
Refer to the pre-print for a detailed introduction of our work. There are also some further works based on LAMBDA
coming soon.
Need python>=3.7
, and packages in requirements.txt
, using venv or conda is recommanded.
See examples/hoelder_table_lambda.py
for detail.
This repo can be distibuted under the MIT license.