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How well do you know your summarization datasets?

Priyam Tejaswin, Dhruv Naik, Pengfei Liu

202115 citationsDOIOpen Access PDF

Abstract

State-of-the-art summarization systems are trained and evaluated on massive datasets scraped from the web. Despite their prevalence, we know very little about the underlying characteristics (data noise, summarization complexity, etc.) of these datasets, and how these affect system performance and the reliability of automatic metrics like ROUGE. In this study, we manually analyse 600 samples from three popular summarization datasets. Our study is driven by a six-class typology which captures different noise types (missing facts, entities) and degrees of summarization difficulty (extractive, abstractive). We follow with a thorough analysis of 27 state-of-the-art summarization models and 5 popular metrics, and report our key insights: (1) Datasets have distinct data quality and complexity distributions, which can be traced back to their collection process. (2) The performance of models and reliability of metrics is dependent on sample complexity. (3) Faithful summaries often receive low scores because of the poor diversity of references. We release the code, annotated data and model outputs.

Topics & Concepts

Automatic summarizationComputer scienceReliability (semiconductor)Multi-document summarizationSample (material)Process (computing)Information retrievalData miningKey (lock)Artificial intelligenceQuantum mechanicsComputer securityOperating systemPhysicsChemistryChromatographyPower (physics)Topic ModelingNatural Language Processing TechniquesSoftware Engineering Research