A Hyper-Heuristic Ensemble Method for Static Job-Shop Scheduling

Evol Comput. 2016 Winter;24(4):609-635. doi: 10.1162/EVCO_a_00183. Epub 2016 Apr 27.

Abstract

We describe a new hyper-heuristic method NELLI-GP for solving job-shop scheduling problems (JSSP) that evolves an ensemble of heuristics. The ensemble adopts a divide-and-conquer approach in which each heuristic solves a unique subset of the instance set considered. NELLI-GP extends an existing ensemble method called NELLI by introducing a novel heuristic generator that evolves heuristics composed of linear sequences of dispatching rules: each rule is represented using a tree structure and is itself evolved. Following a training period, the ensemble is shown to outperform both existing dispatching rules and a standard genetic programming algorithm on a large set of new test instances. In addition, it obtains superior results on a set of 210 benchmark problems from the literature when compared to two state-of-the-art hyper-heuristic approaches. Further analysis of the relationship between heuristics in the evolved ensemble and the instances each solves provides new insights into features that might describe similar instances.

Keywords: Job-shop-scheduling; dispatching rule; genetic programming.; heuristic ensemble; hyper-heuristic.

MeSH terms

  • Algorithms
  • Computer Heuristics*
  • Humans
  • Machine Learning
  • Personnel Staffing and Scheduling*
  • Work