CLLGNEMLDec 18, 2018

Automatic Summarization of Natural Language

arXiv:1812.10549v1
Originality Synthesis-oriented
AI Analysis

It addresses the challenge of abstractive summarization, which remains unsolved in computer science, with implications for detecting understanding and comprehension, but is incremental as a review paper.

This literature review examines the problem of automatic summarization in natural language, contrasting historical progress and current state-of-the-art methods across multiple dimensions, and concludes with insights for improving abstractive summarization measurement.

Automatic summarization of natural language is a current topic in computer science research and industry, studied for decades because of its usefulness across multiple domains. For example, summarization is necessary to create reviews such as this one. Research and applications have achieved some success in extractive summarization (where key sentences are curated), however, abstractive summarization (synthesis and re-stating) is a hard problem and generally unsolved in computer science. This literature review contrasts historical progress up through current state of the art, comparing dimensions such as: extractive vs. abstractive, supervised vs. unsupervised, NLP (Natural Language Processing) vs Knowledge-based, deep learning vs algorithms, structured vs. unstructured sources, and measurement metrics such as Rouge and BLEU. Multiple dimensions are contrasted since current research uses combinations of approaches as seen in the review matrix. Throughout this summary, synthesis and critique is provided. This review concludes with insights for improved abstractive summarization measurement, with surprising implications for detecting understanding and comprehension in general.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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