Predicting Salient Updates for Disaster Summarization
نویسندگان
چکیده
During crises such as natural disasters or other human tragedies, information needs of both civilians and responders often require urgent, specialized treatment. Monitoring and summarizing a text stream during such an event remains a difficult problem. We present a system for update summarization which predicts the salience of sentences with respect to an event and then uses these predictions to directly bias a clustering algorithm for sentence selection, increasing the quality of the updates. We use novel, disaster-specific features for salience prediction, including geo-locations and language models representing the language of disaster. Our evaluation on a standard set of retrospective events using ROUGE shows that salience prediction provides a significant improvement over other approaches.
منابع مشابه
مقایسه روشهای مختلف یادگیری ماشین در خلاصهسازی استخراجی گفتار به گفتار فارسی بدون استفاده از رونوشت
In this paper, extractive speech summarization using different machine learning algorithms was investigated. The task of Speech summarization deals with extracting important and salient segments from speech in order to access, search, extract and browse speech files easier and in a less costly manner. In this paper, a new method for speech summarization without using automatic speech recognitio...
متن کاملExtractive and Abstractive Event Summarization over Streaming Web Text
During crises, information is critical for responders and victims. When the event is significant, as in the case of hurricane Sandy, the amount of content produced by traditional news outlets, relief organizations, and social media vastly overwhelms those trying to monitor the situation. The ensuing digital overload that accompanies large scale disasters suggests an opportunity for automatic su...
متن کاملA Hybrid Approach to Multi-document Summarization of Opinions in Reviews
We present a hybrid method to generate summaries of product and services reviews by combining natural language generation and salient sentence selection techniques. Our system, STARLET-H, receives as input textual reviews with associated rated topics, and produces as output a natural language document summarizing the opinions expressed in the reviews. STARLET-H operates as a hybrid abstractive/...
متن کاملThe Role of Semantics in Automatic Summarization: A Feasibility Study
State-of-the-art methods in automatic summarization rely almost exclusively on extracting salient sentences from input texts. Such extractive methods succeed in producing summaries which capture salient information but fail to produce fluent and coherent summaries. Recent progress in robust semantic analysis makes the application of semantic techniques to summarization relevant. We review in th...
متن کاملAutomatic Summarization from Multiple Documents (Extended Abstract)
Since the late 50’s and Luhn [Luh58] the information community has expressed its interest in summarizing texts. The domains of application of such methodologies are countless, ranging from news summarization [WL03, BM05, ROWBG05] to scientific article summarization [TM02] and meeting summarization [NPDP05, ELH03]. Summarization has been defined as a reductive transformation of a given set of te...
متن کامل