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GRUEN for Evaluating Linguistic Quality of Generated Text

Wanzheng Zhu, Suma Bhat

202043 citationsDOIOpen Access PDF

Abstract

Automatic evaluation metrics are indispensable for evaluating generated text. To date, these metrics have focused almost exclusively on the content selection aspect of the system output, ignoring the linguistic quality aspect altogether. We bridge this gap by proposing GRUEN for evaluating Grammaticality, non-Redundancy, focUs, structure and coherENce of generated text. 1 GRUEN utilizes a BERTbased model and a class of syntactic, semantic, and contextual features to examine the system output. Unlike most existing evaluation metrics which require human references as an input, GRUEN is reference-less and requires only the system output. Besides, it has the advantage of being unsupervised, deterministic, and adaptable to various tasks. Experiments on seven datasets over four language generation tasks show that the proposed metric correlates highly with human judgments. 2

Topics & Concepts

GrammaticalityComputer scienceRedundancy (engineering)Natural language processingArtificial intelligenceCoherence (philosophical gambling strategy)Metric (unit)Selection (genetic algorithm)Quality (philosophy)GrammarLinguisticsEpistemologyQuantum mechanicsOperations managementEconomicsPhilosophyPhysicsOperating systemNatural Language Processing TechniquesTopic ModelingText Readability and Simplification