Novelty-Based Generation of Continuous Landscapes with Diverse Local Optima Networks
Kippei Mizuta, Shoichiro Tanaka, Shuhei Tanaka, Toshiharu Hatanaka
TLDR
This paper introduces a novel method to efficiently generate diverse continuous landscapes with tunable multimodality and their Local Optima Networks.
Key contributions
- Proposes an alternative definition of Basins of Attraction (BoAs) for Max-Set of Gaussians (MSG) landscapes.
- Enables low-cost Local Optima Network (LON) construction by bypassing expensive search-based BoA identification.
- Leverages Novelty Search to generate diverse MSG landscapes with varied graph topologies and search difficulty.
- Predicts evolutionary algorithm success rates using features extracted from the generated LONs.
Why it matters
This work addresses the high computational cost of constructing Local Optima Networks (LONs) in continuous optimization. By enabling efficient generation of diverse LONs, it facilitates systematic investigation into the relationship between landscape features and evolutionary algorithm performance. This framework provides a valuable dataset for landscape-aware optimization research.
Original Abstract
Local Optima Networks (LONs) represent the global structure of search spaces as graphs, but their construction requires iterative execution of a search algorithm to find local optima and approximate transitions between Basins of Attraction (BoAs). In continuous optimization, this high computational cost prevents systematic investigation of the relationship between LON features and evolutionary algorithm performance. To address this issue, we propose an alternative definition of BoAs for Max-Set of Gaussians (MSG) landscapes with explicitly tunable multimodality. This bypasses search-based BoA identification, enabling low-cost LON construction. Moreover, we leverage Novelty Search (NS) to explore the parameter space of the MSG landscape generator, producing instances with diverse graph topologies. Our experiments show that the proposed BoAs closely align with gradient-based BoAs, and that NS successfully generates instances with varied search difficulty and connectivity patterns among optima. Finally, over the instances generated by NS, we predict the success rate of two well-established evolutionary algorithms from LON features. While our LON construction is specific to MSG landscapes, the proposed framework provides a dataset that serves as a foundation for landscape-aware optimization.
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