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Human Evaluation of Creative NLG Systems: An Interdisciplinary Survey on Recent Papers

Mika Hämäläinen, Khalid Alnajjar

202112 citationsDOIOpen Access PDF

Abstract

We survey human evaluation in papers presenting work on creative natural language generation that have been published in INLG 2020 and ICCC 2020. The most typical human evaluation method is a scaled survey, typically on a 5 point scale, while many other less common methods exist. The most commonly evaluated parameters are meaning, syntactic correctness, novelty, relevance and emotional value, among many others. Our guidelines for future evaluation include clearly defining the goal of the generative system, asking questions as concrete as possible, testing the evaluation setup, using multiple different evaluation setups, reporting the entire evaluation process and potential biases clearly, and finally analyzing the evaluation results in a more profound way than merely reporting the most typical statistics.

Topics & Concepts

NoveltyComputer scienceCorrectnessRelevance (law)Meaning (existential)Generative grammarPoint (geometry)Natural language generationProcess (computing)Scale (ratio)Value (mathematics)Natural (archaeology)Natural languageData scienceArtificial intelligenceMachine learningPsychologyProgramming languageMathematicsQuantum mechanicsSocial psychologyArchaeologyPolitical scienceLawHistoryPhysicsPsychotherapistGeometryTopic ModelingMultimodal Machine Learning ApplicationsSpeech and dialogue systems