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Correction to: Investigating the parameter space of evolutionary algorithms (BioData Mining (2018) 11 (2) DOI: 10.1186/s13040-018-0164-x)

    Research output: Contribution to journalComment/debate

    Abstract

    Following publication of the original article [1], an error was reported in one of the experiments. On page 11 of [1] we described the following experiment: DEAP: For each of the 110 good parameter sets found, generate pop-size × gen- count × [1, 5] random solutions and check how many of them pass the same 5- problem criterion employed above. We showed that no random tree thus created met the success criterion described in the paper. However, it seems that we inadvertently used DEAP defaults, one of which is a maximal tree height of 2. This produces small, shallow trees, and it can be argued that they stand little chance of succeeding in solving the problems addressed in the paper. We reran said experiment, this time running eight sub-experiments: Generate random trees through grow method (a) with minimal height 1, maximal height 5, (b) with minimal height 1, maximal height 10, (c) with minimal height 2, maximal height 5, (d) with minimal height 2, maximal height 10. Generate random trees through full method (a) with minimal height 1, maximal height 5, (b) with minimal height 1, maximal height 10, c) with minimal height 2, maximal height 5, (d) with minimal height 2, maximal height 10. Despite the much larger trees thus created our results have been confirmed, namely, none of the random trees met the success criterion.

    Original languageEnglish
    Article number22
    JournalBioData Mining
    Volume12
    Issue number1
    DOIs
    StatePublished - 18 Nov 2019

    ASJC Scopus subject areas

    • Biochemistry
    • Molecular Biology
    • Genetics
    • Computer Science Applications
    • Computational Mathematics
    • Computational Theory and Mathematics

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