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arxiv: 2402.06913 · v1 · pith:CFHM3QEP · submitted 2024-02-10 · cs.CL

TL;DR Progress: Multi-faceted Literature Exploration in Text Summarization

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classification cs.CL
keywords summarizationtexthttpsliteratureprogresstooladditionaddressed
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This paper presents TL;DR Progress, a new tool for exploring the literature on neural text summarization. It organizes 514~papers based on a comprehensive annotation scheme for text summarization approaches and enables fine-grained, faceted search. Each paper was manually annotated to capture aspects such as evaluation metrics, quality dimensions, learning paradigms, challenges addressed, datasets, and document domains. In addition, a succinct indicative summary is provided for each paper, consisting of automatically extracted contextual factors, issues, and proposed solutions. The tool is available online at https://www.tldr-progress.de, a demo video at https://youtu.be/uCVRGFvXUj8

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