Please use this identifier to cite or link to this item: http://hdl.handle.net/1893/30883
Appears in Collections:Computing Science and Mathematics Journal Articles
Peer Review Status: Refereed
Title: Inferring Future Landscapes: Sampling the Local Optima Level
Author(s): Thomson, Sarah L
Ochoa, Gabriela
Verel, Sébastien
Veerapen, Nadarajen
Contact Email: s.l.thomson@stir.ac.uk
Keywords: Combinatorial Optimisation
Fitness Landscapes
Local Optima Networks
Funnel Landscapes.
Issue Date: Dec-2020
Date Deposited: 30-Mar-2020
Citation: Thomson SL, Ochoa G, Verel S & Veerapen N (2020) Inferring Future Landscapes: Sampling the Local Optima Level. Evolutionary Computation, 28 (4), pp. 621-641. https://doi.org/10.1162/evco_a_00271
Abstract: Connection patterns among Local Optima Networks (LONs) can inform heuristic design for optimisation. LON research has predominantly required complete enumeration of a fitness landscape, thereby restricting analysis to problems diminutive in size compared to real-life situations. LON sampling algorithms are therefore important. In this paper, we study LON construction algorithms for the Quadratic Assignment Problem (QAP). Using machine learning, we use estimated LON features to predict search performance for competitive heuristics used in the QAP domain. The results show that by using random forest regression, LON construction algorithms produce fitness landscape features which can explain almost all search variance. We find that LON samples better relate to search than enumerated LONs do. The importance of fitness levels of sampled LONs in search predictions is crystallised. Features from LONs produced by different algorithms are combined in predictions for the first time, with promising results for this ‘super-sampling’: a model to predict tabu search success explained 99% of variance. Arguments are made for the use-case of each LON algorithm and for combining the exploitative process of one with the exploratory optimisation of the other.
DOI Link: 10.1162/evco_a_00271
Rights: © 2020 Massachusetts Institute of Technology. Accepted for publication in Evolutionary Computing: https://doi.org/10.1162/evco_a_00271
Licence URL(s): https://storre.stir.ac.uk/STORREEndUserLicence.pdf

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