ATSumm: Auxiliary information enhanced approach for abstractive disaster Tweet Summarization with sparse training data
Piyush Kumar Garg, Roshni Chakraborty, and Sourav Kumar Dandapat

TL;DR
This paper introduces ATSumm, an abstractive disaster tweet summarization method that leverages auxiliary key-phrase information to improve performance with limited training data, outperforming existing approaches.
Contribution
The study proposes the AuxPGN model with key-phrase attention, effectively addressing data sparsity in disaster tweet summarization and achieving superior results.
Findings
Achieves 4-80% improvement in ROUGE-N F1-score over state-of-the-art methods.
Effectively utilizes auxiliary key-phrase information to enhance summarization.
Performs well across 13 disaster datasets.
Abstract
The abundance of situational information on Twitter poses a challenge for users to manually discern vital and relevant information during disasters. A concise and human-interpretable overview of this information helps decision-makers in implementing efficient and quick disaster response. Existing abstractive summarization approaches can be categorized as sentence-based or key-phrase-based approaches. This paper focuses on sentence-based approach, which is typically implemented as a dual-phase procedure in literature. The initial phase, known as the extractive phase, involves identifying the most relevant tweets. The subsequent phase, referred to as the abstractive phase, entails generating a more human-interpretable summary. In this study, we adopt the methodology from prior research for the extractive phase. For the abstractive phase of summarization, most existing approaches employ…
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Taxonomy
TopicsAdvanced Text Analysis Techniques · Public Relations and Crisis Communication · Sentiment Analysis and Opinion Mining
