Abstract

The principle of the Information Bottleneck (Tishby et al., 1999) produces a summary of information X optimized to predict some other relevant information Y. In this paper, we propose a novel approach to unsupervised sentence summarization by mapping the Information Bottleneck principle to a conditional language modelling objective: given a sentence, our approach seeks a compressed sentence that can best predict the next sentence. Our iterative algorithm under the Information Bottleneck objective searches gradually shorter subsequences of the given sentence while maximizing the probability of the next sentence conditioned on the summary. Using only pretrained language models with no direct supervision, our approach can efficiently perform extractive sentence summarization over a large corpus. Building on our unsupervised extractive summarization, we also present a new approach to self-supervised abstractive summarization, where a transformer-based language model is trained on the output summaries of our unsupervised method. Empirical results demonstrate that our extractive method outperforms other unsupervised models on multiple automatic metrics. In addition, we find that our self-supervised abstractive model outperforms unsupervised baselines (including our own) by human evaluation along multiple attributes.

Highlights

  • ObjectivesOur goal is to optimize the Information Bottleneck (IB) equation (Eq 2)

  • Recent approaches based on neural networks have brought significant advancements for both extractive and abstractive summarization (Rush et al, 2015; Nallapati et al, 2016)

  • BottleSum achieves the highest R-1 and R-L scores for unsupervised summarization on both datasets. This is promising in terms of the effectiveness of the Information Bottleneck (IB) as a framework

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Summary

Objectives

Our goal is to optimize the IB equation (Eq 2)

Methods
Results
Conclusion
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