Global-aware Beam Search for Neural Abstractive Summarization
This study develops a calibrated beam-based algorithm with awareness of the global attention distribution for neural abstractive summarization, aiming to improve the local optimality problem of the original beam search in a rigorous way. Specifically, a novel global protocol is proposed based on the...
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          | Main Authors | , , , | 
|---|---|
| Format | Journal Article | 
| Language | English | 
| Published | 
          
        15.09.2020
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| Subjects | |
| Online Access | Get full text | 
| DOI | 10.48550/arxiv.2009.06891 | 
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| Abstract | This study develops a calibrated beam-based algorithm with awareness of the
global attention distribution for neural abstractive summarization, aiming to
improve the local optimality problem of the original beam search in a rigorous
way. Specifically, a novel global protocol is proposed based on the attention
distribution to stipulate how a global optimal hypothesis should attend to the
source. A global scoring mechanism is then developed to regulate beam search to
generate summaries in a near-global optimal fashion. This novel design enjoys a
distinctive property, i.e., the global attention distribution could be
predicted before inference, enabling step-wise improvements on the beam search
through the global scoring mechanism. Extensive experiments on nine datasets
show that the global (attention)-aware inference significantly improves
state-of-the-art summarization models even using empirical hyper-parameters.
The algorithm is also proven robust as it remains to generate meaningful texts
with corrupted attention distributions. The codes and a comprehensive set of
examples are available. | 
    
|---|---|
| AbstractList | This study develops a calibrated beam-based algorithm with awareness of the
global attention distribution for neural abstractive summarization, aiming to
improve the local optimality problem of the original beam search in a rigorous
way. Specifically, a novel global protocol is proposed based on the attention
distribution to stipulate how a global optimal hypothesis should attend to the
source. A global scoring mechanism is then developed to regulate beam search to
generate summaries in a near-global optimal fashion. This novel design enjoys a
distinctive property, i.e., the global attention distribution could be
predicted before inference, enabling step-wise improvements on the beam search
through the global scoring mechanism. Extensive experiments on nine datasets
show that the global (attention)-aware inference significantly improves
state-of-the-art summarization models even using empirical hyper-parameters.
The algorithm is also proven robust as it remains to generate meaningful texts
with corrupted attention distributions. The codes and a comprehensive set of
examples are available. | 
    
| Author | Ma, Ye Zong, Lu Lan, Zixun Huang, Kaizhu  | 
    
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| BackLink | https://doi.org/10.48550/arXiv.2009.06891$$DView paper in arXiv | 
    
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global attention distribution for neural abstractive summarization, aiming to... | 
    
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| Title | Global-aware Beam Search for Neural Abstractive Summarization | 
    
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