Publication Details
A PROBLEM KNOWLEDGE BASED BAYESIAN OPTIMIZATION ALGORITHM APPLIED IN MULTIPROCESSOR SCHEDULING
optimization problems, multiprocessor scheduling problem, evolutionary algorithms, Bayesian optimization algorithm, problem knowledge.
This paper deals with the multiprocessor scheduling problem, which belongs to the class of frequently solved decomposition tasks. The goals is to experimentally compare the performance of the recently proposed Mixed Bayesian Optimization Algorithm (MBOA) based on probabilistic model with the newly derived knowledge based MBOA version (KMBOA) This algorithm includes utilization of prior knowledge about the structure of a task graph to speed-up the convergence and the solution quality. The performance of standard genetic algorithm was also tested on the same benchmarks.
@INPROCEEDINGS{FITPUB7519, author = "Josef Schwarz and Ji\v{r}\'{i} Jaro\v{s}", title = "A PROBLEM KNOWLEDGE BASED BAYESIAN OPTIMIZATION ALGORITHM APPLIED IN MULTIPROCESSOR SCHEDULING", pages = "83--88", booktitle = "Mendel Conference on Soft Computing", year = 2004, location = "Brno, CZ", publisher = "Faculty of Mechanical Engineering BUT", ISBN = "80-214-2676-4", language = "english", url = "https://www.fit.vut.cz/research/publication/7519" }