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Global Explainability of BERT-Based Evaluation Metrics by Disentangling along Linguistic Factors

Marvin Kaster, Wei Zhao, Steffen Eger

2021Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing13 citationsDOIOpen Access PDF

Abstract

Evaluation metrics are a key ingredient for progress of text generation systems. In recent years, several BERT-based evaluation metrics have been proposed (including BERTScore, MoverScore, BLEURT, etc.) which correlate much better with human assessment of text generation quality than BLEU or ROUGE, invented two decades ago. However, little is known what these metrics, which are based on black-box language model representations, actually capture (it is typically assumed they model semantic similarity). In this work, we use a simple regression based global explainability technique to disentangle metric scores along linguistic factors, including semantics, syntax, morphology, and lexical overlap. We show that the different metrics capture all aspects to some degree, but that they are all substantially sensitive to lexical overlap, just like BLEU and ROUGE. This exposes limitations of these novelly proposed metrics, which we also highlight in an adversarial test scenario.

Topics & Concepts

Computer scienceMetric (unit)Artificial intelligenceSemantics (computer science)Natural language processingSyntaxSimilarity (geometry)Adversarial systemKey (lock)Distributional semanticsQuality (philosophy)Semantic similarityProgramming languageEconomicsEpistemologyComputer securityPhilosophyOperations managementImage (mathematics)Topic ModelingSoftware Engineering ResearchNatural Language Processing Techniques
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