Publication | Open Access
Using genetic algorithms to create meaningful poetic text
94
Citations
21
References
2011
Year
EngineeringLexical SemanticsSemanticsCorpus LinguisticsNatural Language ProcessingMetric TextComputational LinguisticsGenetic AlgorithmLanguage StudiesInteractive EvolutionLexiconEvolutionary ArtMachine TranslationPoeticsSymbolic Linguistic RepresentationMeaningful Poetic TextPoetic TextsText ProcessingLinguisticsLanguage Generation
This article presents a series of experiments in automatically generating poetic texts. We confined our attention to the generation of texts which are syntactically well-formed, meet certain pre-specified patterns of metre and broadly convey some given meaning. Such aspects can be formally defined, thus avoiding the complications of imagery and interpretation that are central to assessing more free forms of verse. Our implemented system, McGONAGALL, applies the genetic algorithm to construct such texts. It uses a sophisticated linguistic formalism to represent its genomic information, from which can be computed the phenotypic information of both semantic representations and patterns of stress. The conducted experiments broadly indicated that relatively meaningful text could be produced if the constraints on metre were relaxed, and precise metric text was possible with loose semantic constraints, but it was difficult to produce text which was both semantically coherent and of high quality metrically.
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