heuristics to solve a wide range of problems. To be worthwhile, such combination should
outperform the single heuristics. This paper presents a GA-based method that produces
general hyper-heuristics that solve two-dimensional cutting stock problems. The GA uses a
variable-length representation, which evolves combinations of condition-action rules
producing hyper-heuristics after going through a learning process which includes training …