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Intrinsic Evaluation of Summarization Datasets

Rishi Bommasani, Claire Cardie

202053 citationsDOIOpen Access PDF

Abstract

High quality data forms the bedrock for building meaningful statistical models in NLP. Consequently, data quality must be evaluated either during dataset construction or post hoc. Almost all popular summarization datasets are drawn from natural sources and do not come with inherent quality assurance guarantees. In spite of this, data quality has gone largely unquestioned for many recent summarization datasets. We perform the first large-scale evaluation of summarization datasets by introducing 5 intrinsic metrics and applying them to 10 popular datasets. We find that data usage in recent summarization research is sometimes inconsistent with the underlying properties of the datasets employed. Further, we discover that our metrics can serve the additional purpose of being inexpensive heuristics for detecting generically low quality examples.

Topics & Concepts

Automatic summarizationComputer scienceHeuristicsQuality (philosophy)Data miningInformation retrievalMulti-document summarizationData qualityData scienceArtificial intelligenceMetric (unit)EngineeringOperations managementOperating systemPhilosophyEpistemologyTopic ModelingNatural Language Processing TechniquesAdvanced Text Analysis Techniques
Intrinsic Evaluation of Summarization Datasets | Litcius