Back to Search Start Over

Systematic design space exploration by learning the explored space using Machine Learning

Authors :
Kumar, Avinash
Kumar, Anish
Sharma, Sumit
Singh, Surjeet
Vardhan, Kumar
Publication Year :
2023

Abstract

Current practice in parameter space exploration in euclidean space is dominated by randomized sampling or design of experiment methods. The biggest issue with these methods is not keeping track of what part of parameter space has been explored and what has not. In this context, we utilize the geometric learning of explored data space using modern machine learning methods to keep track of already explored regions and samples from the regions that are unexplored. For this purpose, we use a modified version of a robust random-cut forest along with other heuristic-based approaches. We demonstrate our method and its progression in two-dimensional Euclidean space but it can be extended to any dimension since the underlying method is generic.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2303.08249
Document Type :
Working Paper