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Hierarchical Human-Like Deep Neural Networks for Abstractive Text Summarization.

Min Yang, Chengming Li, Ying Shen

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    |July 24, 2020
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    Summary
    This summary is machine-generated.

    This study introduces a Hierarchical Human-like deep neural network for abstractive text summarization (ATS). The novel HH-ATS model mimics human reading cognition to generate more concise and human-like summaries, outperforming existing methods.

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    Area of Science:

    • Artificial Intelligence
    • Natural Language Processing
    • Deep Learning

    Background:

    • Abstractive text summarization (ATS) aims to generate concise and coherent summaries.
    • Deep learning has advanced ATS, but human-like summary generation remains a challenge.
    • Human reading cognition is underexplored in current deep neural networks for ATS.

    Purpose of the Study:

    • To propose a novel Hierarchical Human-like deep neural network for ATS (HH-ATS).
    • To mimic human reading cognition stages (rough reading, active reading, postediting) in an AI system.
    • To improve the quality and human-likeness of abstractive summaries.

    Main Methods:

    • Developed HH-ATS, a deep neural network incorporating three components: knowledge-aware hierarchical attention, multitask learning, and a dual discriminator generative adversarial network.
    • Modeled the system on human cognitive processes for reading comprehension and summary writing.
    • Evaluated performance on benchmark datasets: CNN/Daily Mail and Gigaword.

    Main Results:

    • HH-ATS demonstrated superior performance compared to existing ATS methods.
    • The proposed model consistently achieved substantial improvements on benchmark datasets.
    • The hierarchical, human-cognition-inspired approach proved effective for ATS.

    Conclusions:

    • The HH-ATS model represents a significant advancement in abstractive text summarization.
    • Mimicking human reading cognition is a promising direction for developing more sophisticated ATS systems.
    • HH-ATS offers a new state-of-the-art for generating high-quality, human-like summaries.