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Ranking creative language characteristics in small data scenarios

Julia Siekiera

2020Computer science - computation and language

Abstract

The ability to rank creative natural language provides an important general tool for downstream language understanding and generation. However, current deep ranking models require substantial amounts of labeled data that are difficult and expensive to obtain for different domains, languages and creative characteristics. A recent neural approach, the DirectRanker, promises to reduce the amount of training data needed but its application to text isn't fully explored. We therefore adapt the DirectR

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Human-In-The-Loop › Autonomous GenerationCreativity Frameworks › Computational CreativityCreativity Frameworks › Linguistic CreativityCreative Phenomena Studied › Figurative LanguageCreative Phenomena Studied › HumorCreativity Evaluation Methods › Creativity-Specific EvaluationCreativity Evaluation Methods › Human EvaluationModel Scale › Small (<3B)Creativity Evaluation Methods › Automatic MetricsResearch Focus › Architectural ResearchTextual Domain › Literary TextsCreative Phenomena Studied › WordplayRelationship to Creativity › ImplicitLevel of Analysis › Document-Level

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Paper ID: e4e95343-8b25-42d6-8d9d-0c106569414aAdded: 10/26/2025